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  • ✇Semiconductor Engineering
  • Chip Industry Technical Paper Roundup: August 20Linda Christensen
    New technical papers recently added to Semiconductor Engineering’s library: Technical Paper Research Organizations Design Technology Co-Optimization and Time-Efficient Verification for Enhanced Pin Accessibility in the Post-3-nm Node Samsung Electronics and Kyungpook National University (KNU) Search-in-Memory (SiM): Reliable, Versatile, and Efficient Data Matching in SSD’s NAND Flash Memory Chip for Data Indexing Acceleration TU Dortmund, Academia Sinica, and National Taiwan Univers
     

Chip Industry Technical Paper Roundup: August 20

20. Srpen 2024 v 09:01

New technical papers recently added to Semiconductor Engineering’s library:

Technical Paper Research Organizations
Design Technology Co-Optimization and Time-Efficient Verification for Enhanced Pin Accessibility in the Post-3-nm Node Samsung Electronics and Kyungpook National University (KNU)
Search-in-Memory (SiM): Reliable, Versatile, and Efficient Data Matching in SSD’s NAND Flash Memory Chip for Data Indexing Acceleration TU Dortmund, Academia Sinica, and National Taiwan University
Achieving Sustainability in the Semiconductor Industry: The Impact of Simulation and AI Lam Research
HMComp: Extending Near-Memory Capacity using Compression in Hybrid Memory Chalmers University of Technology and ZeroPoint Technologies
Retention-aware zero-shifting technique for Tiki-Taka algorithm-based analog deep learning accelerator Pohang University of Science and Technology, Korea University, and Kyungpook National University
Improvement of Contact Resistance and 3D Integration of 2D Material Field-Effect Transistors Using Semi-Metallic PtSe2 Contacts Yonsei University, Korea Advanced Institute of Science and Technology (KAIST), Lincoln University College, Korea Institute of Science and Technology (KIST), and Ewha Womans University
Ultra-steep slope cryogenic FETs based on bilayer graphene RWTH Aachen University, Forschungszentrum Julich, National Institute for Materials Science (Japan), and AMO GmbH

More Reading
Technical Paper Library home

The post Chip Industry Technical Paper Roundup: August 20 appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week in ReviewThe SE Staff
    Okinawa Institute of Science and Technology proposed a new EUV litho technology using only four reflective mirrors and a new method of illumination optics that it claims will use 1/10 the power and cost half as much as existing EUV technology from ASML. Applied Materials may not receive expected U.S. funding to build a $4 billion research facility in Sunnyvale, CA, due to internal government disagreements over how to fund chip R&D, according to Bloomberg. SEMI published a position paper this
     

Chip Industry Week in Review

2. Srpen 2024 v 09:01

Okinawa Institute of Science and Technology proposed a new EUV litho technology using only four reflective mirrors and a new method of illumination optics that it claims will use 1/10 the power and cost half as much as existing EUV technology from ASML.

Applied Materials may not receive expected U.S. funding to build a $4 billion research facility in Sunnyvale, CA, due to internal government disagreements over how to fund chip R&D, according to Bloomberg.

SEMI published a position paper this week cautioning the European Union against imposing additional export controls to allow companies, encouraging them to  be “as free as possible in their investment decisions to avoid losing their agility and relevance across global markets.” SEMI’s recommendations on outbound investments are in response to the European Economic Security Strategy and emphasize the need for a transparent and predictable regulatory framework.

The U.S. may restrict China’s access to HBM chips and the equipment needed to make them, reports Bloomberg. Today those chips are manufactured by two Korean-based companies, Samsung and SK hynix, but U.S.-based Micron expects to begin shipping 12-high stacks of HBM3E in 2025, and is currently working on HBM4.

Synopsys executive chair and founder Dr. Aart de Geus was named the winner of the Semiconductor Industry Association’s Robert N. Noyce Award. De Geus was selected due to his contributions to EDA technology over a career spanning more than four decades.

The top three foundries plan to implement high-NA EUV lithography as early as 2025 for the 18 angstrom generation, but the replacement of single exposure high-NA (0.55) over double patterning with standard EUV (NA = 0.33) depends on whether it provides better results at a reasonable cost per wafer.

Quick links to more news:

Global
In-Depth
Market Reports and Earnings
Education and Training
Security
Product News
Research
Events and Further Reading


Global

Belgium-based Imec released part 2 of its chiplets series, addressing testing strategies and standardization efforts, as well as guidelines and research “towards efficient ESD protection strategies for advanced 3D systems-on-chip.”

Also in Belgium, BelGan, maker of GaN chips, filed for bankruptcy according to the Brussels Times.

TSMC‘s Dresden, Germany, plant will break ground this month.

The UK will dole out more than £100 million (~US $128 million) in funding to develop five new quantum research hubs in Glasgow, Edinburgh, Birmingham, Oxford, and London.

MassPhoton is opening Hong Kong‘s first ultra-high vacuum GaN epitaxial wafer pilot line and will establish a GaN research center.

Infineon completed the sale of its manufacturing sites in the Philippines and South Korea to ASE.

Israel-based RAAAM Memory Technologies received a €5.25 million grant from the European Innovation Council (EIC) to support the development and commercialization of its innovative memory solutions. This funding will enable RAAAM to advance its research in high-performance and energy-efficient memory technologies, accelerating their integration into various applications and markets.


In-Depth

Semiconductor Engineering published its Automotive, Security and Pervasive Computing newsletter this week, featuring these top stories and video:

And:


Market Reports and Earnings

The semiconductor equipment industry is on a positive trajectory in 2024, with moderate revenue growth observed in Q2 after a subdued Q1, according to a new report from Yole Group. Wafer Fab Equipment revenue is projected to grow by 1.3% year-on-year, despite a 12% drop in Q1. Test equipment lead times are normalizing, improving order conditions. Key areas driving growth include memory and logic capital expenditures and high-bandwidth memory demand.

Worldwide silicon wafer shipments increased by 7% in Q2 2024, according to SEMI‘s latest report. This growth is attributed to robust demand from multiple semiconductor sectors, driven by advancements in AI, 5G, and automotive technologies.

The RF GaN market is projected to grow to US $2 billion by 2029, a 10% CAGR, according to Yole Group.

Counterpoint released their Q2 smartphone top 10 report.

Renesas completed their acquisition of EDA firm Altium, best known for its EDA platform and freeware CircuitMaker package.

It’s earnings season and here are recently released financials in the chip industry:

AMD  Advantest   Amkor   Ansys  Arteris   Arm   ASE   ASM   ASML
Cadence  IBM   Intel   Lam Research   Lattice   Nordson   NXP   Onsemi 
Qualcomm   Rambus  Samsung    SK Hynix   STMicro   Teradyne    TI  
Tower  TSMC    UMC  Western Digital

Industry stock price impacts are here.


Education and Training

Rochester Institute of Technology is leading a new pilot program to prepare community college students in areas such as cleanroom operations, new materials, simulation, and testing processes, with the intent of eventual transfer into RIT’s microelectronic engineering program.

Purdue University inked a deal with three research institutions — University of Piraeus, Technical University of Crete, and King’s College London —to develop joint research programs for semiconductors, AI and other critical technology fields.

The European Chips Skills Academy formed the Educational Leaders Board to help bridge the talent gap in Europe’s microelectronics sector.  The Board includes representatives from universities, vocational training providers, educators and research institutions who collaborate on strategic initiatives to strengthen university networks and build academic expertise through ECSA training programs.


Security

The Cybersecurity and Infrastructure Security Agency (CISA) is encouraging Apple users to review and apply this week’s recent security updates.

Microsoft Azure experienced a nearly 10 hour DDoS attack this week, leading to global service disruption for many customers.  “While the initial trigger event was a Distributed Denial-of-Service (DDoS) attack, which activated our DDoS protection mechanisms, initial investigations suggest that an error in the implementation of our defenses amplified the impact of the attack rather than mitigating it,” stated Microsoft in a release.

NIST published:

  • “Recommendations For Increasing U.S. Participation and Leadership in Standards Development,” a report outlining cybersecurity recommendations and mitigation strategies.
  • Final guidance documents and software to help improve the “safety, security and trustworthiness of AI systems.”
  • Cloud Computing Forensic Reference Architecture guide.

Delta Air Lines plans to seek damages after losing $500 million in lost revenue due to security company CrowdStrike‘s software update debacle.  And shareholders are also angry.

Recent security research:

  • Physically Secure Logic Locking With Nanomagnet Logic (UT Dallas)
  • WBP: Training-time Backdoor Attacks through HW-based Weight Bit Poisoning (UCF)
  • S-Tune: SOT-MTJ Manufacturing Parameters Tuning for Secure Next Generation of Computing ( U. of Arizona, UCF)
  • Diffie Hellman Picture Show: Key Exchange Stories from Commercial VoWiFi Deployments (CISPA, SBA Research, U. of Vienna)

Product News

Lam Research introduced a new version of its cryogenic etch technology designed to enhance the manufacturing of 3D NAND for AI applications. This technology allows for the precise etching of high aspect ratio features, crucial for creating 1,000-layer 3D NAND.


Fig.1: 3D NAND etch. Source: Lam Research

Alphawave Semi launched its Universal Chiplet Interconnect Express Die-to-Die IP. The subsystem offers 8 Tbps/mm bandwidth density and supports operation at 24 Gbps for D2D connectivity.

Infineon introduced a new MCU series for industrial and consumer motor controls, as well as power conversion system applications. The company also unveiled its new GoolGaN Drive product family of integrated single switches and half-bridges with integrated drivers.

Rambus released its DDR5 Client Clock Driver for next-gen, high-performance desktops and notebooks. The chips include Gen1 to Gen4 RCDs, power management ICs, Serial Presence Detect Hubs, and temperature sensors for leading-edge servers.

SK hynix introduced its new GDDR7 graphics DRAM. The product has an operating speed of 32Gbps, can process 1.5TB of data per second and has a 50% power efficiency improvement compared to the previous generation.

Intel launched its new Lunar Lake Ultra processors. The long awaited chips will be included in more than 80 laptop designs and has more than 40 NPU tera operations per second as well as over 60 GPU TOPS delivering more than 100 platform TOPS.

Brewer Science achieved recertification as a Certified B Corporation, reaffirming its commitment to sustainable and ethical business practices.

Panasonic adopted Siemens’ Teamcenter X cloud product lifecycle management solution, citing Teamcenter X’s Mendix low-code platform, improved operational efficiency and flexibility for its choice.

Keysight validated its 5G NR FR1 1024-QAM demodulation test cases for the first time. The 5G NR radio access technology supports eMBB and was validated on the 3GPP TS 38.521-4 test specification.


Research

In a 47-page deep-dive report, the Center for Security and Emerging Technology delved into all of the scientific breakthroughs from 1980 to present that brought EUV lithography to commercialization, including lessons learned for the next emerging technologies.

Researchers at the Paul Scherrer Institute developed a high-performance X-ray tomography technique using burst ptychography, achieving a resolution of 4nm. This method allows for non-destructive imaging of integrated circuits, providing detailed views of nanostructures in materials like silicon and metals.

MIT signed a four-year agreement with the Novo Nordisk Foundation Quantum Computing Programme at University of Copenhagen, focused on accelerating quantum computing hardware research.

MIT’s Research Laboratory of Electronics (RLE) developed a mechanically flexible wafer-scale integrated photonics fabrication platform. This enables the creation of flexible photonic circuits that maintain high performance while being bendable and stretchable. It offers significant potential for integrating photonic circuits into various flexible substrate applications in wearable technology, medical devices, and flexible electronics.

The Naval Research Lab identified a new class of semiconductor nanocrystals with bright ground-state excitons, emphasizing an important advancement in optoelectronics.

Researchers from National University of Singapore developed a novel method, known as tension-driven CHARM3D,  to fabricate 3D self-healing circuits, enabling the 3D printing of free-standing metallic structures without the need for support materials and external pressure.

Find more research in our Technical Papers library.


Events and Further Reading

Find upcoming chip industry events here, including:

Event Date Location
Atomic Layer Deposition (ALD 2024) Aug 4 – 7 Helsinki
Flash Memory Summit Aug 6 – 8 Santa Clara, CA
USENIX Security Symposium Aug 14 – 16 Philadelphia, PA
SPIE Optics + Photonics 2024 Aug 18 – 22 San Diego, CA
Cadence Cloud Tech Day Aug 20 San Jose, CA
Hot Chips 2024 Aug 25- 27 Stanford University/ Hybrid
Optica Online Industry Meeting: PIC Manufacturing, Packaging and Testing (imec) Aug 27 Online
SEMICON Taiwan Sep 4 -6 Taipei
DVCON Taiwan Sep 10 – 11 Hsinchu
AI HW and Edge AI Summit Sep 9 – 12 San Jose, CA
GSA Executive Forum Sep 26 Menlo Park, CA
SPIE Photomask Technology + EUVL Sep 29 – Oct 3 Monterey, CA
Strategic Materials Conference: SMC 2024 Sep 30 – Oct 2 San Jose, CA
Find All Upcoming Events Here

Upcoming webinars are here, including topics such as quantum safe cryptography, analytics for high-volume manufacturing, and mastering EMC simulations for electronic design.

Find Semiconductor Engineering’s latest newsletters here:

Automotive, Security and Pervasive Computing
Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials

 

The post Chip Industry Week in Review appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week in ReviewThe SE Staff
    Okinawa Institute of Science and Technology proposed a new EUV litho technology using only four reflective mirrors and a new method of illumination optics that it claims will use 1/10 the power and cost half as much as existing EUV technology from ASML. Applied Materials may not receive expected U.S. funding to build a $4 billion research facility in Sunnyvale, CA, due to internal government disagreements over how to fund chip R&D, according to Bloomberg. SEMI published a position paper this
     

Chip Industry Week in Review

2. Srpen 2024 v 09:01

Okinawa Institute of Science and Technology proposed a new EUV litho technology using only four reflective mirrors and a new method of illumination optics that it claims will use 1/10 the power and cost half as much as existing EUV technology from ASML.

Applied Materials may not receive expected U.S. funding to build a $4 billion research facility in Sunnyvale, CA, due to internal government disagreements over how to fund chip R&D, according to Bloomberg.

SEMI published a position paper this week cautioning the European Union against imposing additional export controls to allow companies, encouraging them to  be “as free as possible in their investment decisions to avoid losing their agility and relevance across global markets.” SEMI’s recommendations on outbound investments are in response to the European Economic Security Strategy and emphasize the need for a transparent and predictable regulatory framework.

The U.S. may restrict China’s access to HBM chips and the equipment needed to make them, reports Bloomberg. Today those chips are manufactured by two Korean-based companies, Samsung and SK hynix, but U.S.-based Micron expects to begin shipping 12-high stacks of HBM3E in 2025, and is currently working on HBM4.

Synopsys executive chair and founder Dr. Aart de Geus was named the winner of the Semiconductor Industry Association’s Robert N. Noyce Award. De Geus was selected due to his contributions to EDA technology over a career spanning more than four decades.

The top three foundries plan to implement high-NA EUV lithography as early as 2025 for the 18 angstrom generation, but the replacement of single exposure high-NA (0.55) over double patterning with standard EUV (NA = 0.33) depends on whether it provides better results at a reasonable cost per wafer.

Quick links to more news:

Global
In-Depth
Market Reports and Earnings
Education and Training
Security
Product News
Research
Events and Further Reading


Global

Belgium-based Imec released part 2 of its chiplets series, addressing testing strategies and standardization efforts, as well as guidelines and research “towards efficient ESD protection strategies for advanced 3D systems-on-chip.”

Also in Belgium, BelGan, maker of GaN chips, filed for bankruptcy according to the Brussels Times.

TSMC‘s Dresden, Germany, plant will break ground this month.

The UK will dole out more than £100 million (~US $128 million) in funding to develop five new quantum research hubs in Glasgow, Edinburgh, Birmingham, Oxford, and London.

MassPhoton is opening Hong Kong‘s first ultra-high vacuum GaN epitaxial wafer pilot line and will establish a GaN research center.

Infineon completed the sale of its manufacturing sites in the Philippines and South Korea to ASE.

Israel-based RAAAM Memory Technologies received a €5.25 million grant from the European Innovation Council (EIC) to support the development and commercialization of its innovative memory solutions. This funding will enable RAAAM to advance its research in high-performance and energy-efficient memory technologies, accelerating their integration into various applications and markets.


In-Depth

Semiconductor Engineering published its Automotive, Security and Pervasive Computing newsletter this week, featuring these top stories and video:

And:


Market Reports and Earnings

The semiconductor equipment industry is on a positive trajectory in 2024, with moderate revenue growth observed in Q2 after a subdued Q1, according to a new report from Yole Group. Wafer Fab Equipment revenue is projected to grow by 1.3% year-on-year, despite a 12% drop in Q1. Test equipment lead times are normalizing, improving order conditions. Key areas driving growth include memory and logic capital expenditures and high-bandwidth memory demand.

Worldwide silicon wafer shipments increased by 7% in Q2 2024, according to SEMI‘s latest report. This growth is attributed to robust demand from multiple semiconductor sectors, driven by advancements in AI, 5G, and automotive technologies.

The RF GaN market is projected to grow to US $2 billion by 2029, a 10% CAGR, according to Yole Group.

Counterpoint released their Q2 smartphone top 10 report.

Renesas completed their acquisition of EDA firm Altium, best known for its EDA platform and freeware CircuitMaker package.

It’s earnings season and here are recently released financials in the chip industry:

AMD  Advantest   Amkor   Ansys  Arteris   Arm   ASE   ASM   ASML
Cadence  IBM   Intel   Lam Research   Lattice   Nordson   NXP   Onsemi 
Qualcomm   Rambus  Samsung    SK Hynix   STMicro   Teradyne    TI  
Tower  TSMC    UMC  Western Digital

Industry stock price impacts are here.


Education and Training

Rochester Institute of Technology is leading a new pilot program to prepare community college students in areas such as cleanroom operations, new materials, simulation, and testing processes, with the intent of eventual transfer into RIT’s microelectronic engineering program.

Purdue University inked a deal with three research institutions — University of Piraeus, Technical University of Crete, and King’s College London —to develop joint research programs for semiconductors, AI and other critical technology fields.

The European Chips Skills Academy formed the Educational Leaders Board to help bridge the talent gap in Europe’s microelectronics sector.  The Board includes representatives from universities, vocational training providers, educators and research institutions who collaborate on strategic initiatives to strengthen university networks and build academic expertise through ECSA training programs.


Security

The Cybersecurity and Infrastructure Security Agency (CISA) is encouraging Apple users to review and apply this week’s recent security updates.

Microsoft Azure experienced a nearly 10 hour DDoS attack this week, leading to global service disruption for many customers.  “While the initial trigger event was a Distributed Denial-of-Service (DDoS) attack, which activated our DDoS protection mechanisms, initial investigations suggest that an error in the implementation of our defenses amplified the impact of the attack rather than mitigating it,” stated Microsoft in a release.

NIST published:

  • “Recommendations For Increasing U.S. Participation and Leadership in Standards Development,” a report outlining cybersecurity recommendations and mitigation strategies.
  • Final guidance documents and software to help improve the “safety, security and trustworthiness of AI systems.”
  • Cloud Computing Forensic Reference Architecture guide.

Delta Air Lines plans to seek damages after losing $500 million in lost revenue due to security company CrowdStrike‘s software update debacle.  And shareholders are also angry.

Recent security research:

  • Physically Secure Logic Locking With Nanomagnet Logic (UT Dallas)
  • WBP: Training-time Backdoor Attacks through HW-based Weight Bit Poisoning (UCF)
  • S-Tune: SOT-MTJ Manufacturing Parameters Tuning for Secure Next Generation of Computing ( U. of Arizona, UCF)
  • Diffie Hellman Picture Show: Key Exchange Stories from Commercial VoWiFi Deployments (CISPA, SBA Research, U. of Vienna)

Product News

Lam Research introduced a new version of its cryogenic etch technology designed to enhance the manufacturing of 3D NAND for AI applications. This technology allows for the precise etching of high aspect ratio features, crucial for creating 1,000-layer 3D NAND.


Fig.1: 3D NAND etch. Source: Lam Research

Alphawave Semi launched its Universal Chiplet Interconnect Express Die-toDie IP. The subsystem offers 8 Tbps/mm bandwidth density and supports operation at 24 Gbps for D2D connectivity.

Infineon introduced a new MCU series for industrial and consumer motor controls, as well as power conversion system applications. The company also unveiled its new GoolGaN Drive product family of integrated single switches and half-bridges with integrated drivers.

Rambus released its DDR5 Client Clock Driver for next-gen, high-performance desktops and notebooks. The chips include Gen1 to Gen4 RCDs, power management ICs, Serial Presence Detect Hubs, and temperature sensors for leading-edge servers.

SK hynix introduced its new GDDR7 graphics DRAM. The product has an operating speed of 32Gbps, can process 1.5TB of data per second and has a 50% power efficiency improvement compared to the previous generation.

Intel launched its new Lunar Lake Ultra processors. The long awaited chips will be included in more than 80 laptop designs and has more than 40 NPU tera operations per second as well as over 60 GPU TOPS delivering more than 100 platform TOPS.

Brewer Science achieved recertification as a Certified B Corporation, reaffirming its commitment to sustainable and ethical business practices.

Panasonic adopted Siemens’ Teamcenter X cloud product lifecycle management solution, citing Teamcenter X’s Mendix low-code platform, improved operational efficiency and flexibility for its choice.

Keysight validated its 5G NR FR1 1024-QAM demodulation test cases for the first time. The 5G NR radio access technology supports eMBB and was validated on the 3GPP TS 38.521-4 test specification.


Research

In a 47-page deep-dive report, the Center for Security and Emerging Technology delved into all of the scientific breakthroughs from 1980 to present that brought EUV lithography to commercialization, including lessons learned for the next emerging technologies.

Researchers at the Paul Scherrer Institute developed a high-performance X-ray tomography technique using burst ptychography, achieving a resolution of 4nm. This method allows for non-destructive imaging of integrated circuits, providing detailed views of nanostructures in materials like silicon and metals.

MIT signed a four-year agreement with the Novo Nordisk Foundation Quantum Computing Programme at University of Copenhagen, focused on accelerating quantum computing hardware research.

MIT’s Research Laboratory of Electronics (RLE) developed a mechanically flexible wafer-scale integrated photonics fabrication platform. This enables the creation of flexible photonic circuits that maintain high performance while being bendable and stretchable. It offers significant potential for integrating photonic circuits into various flexible substrate applications in wearable technology, medical devices, and flexible electronics.

The Naval Research Lab identified a new class of semiconductor nanocrystals with bright ground-state excitons, emphasizing an important advancement in optoelectronics.

Researchers from National University of Singapore developed a novel method, known as tension-driven CHARM3D,  to fabricate 3D self-healing circuits, enabling the 3D printing of free-standing metallic structures without the need for support materials and external pressure.

Find more research in our Technical Papers library.


Events and Further Reading

Find upcoming chip industry events here, including:

Event Date Location
Atomic Layer Deposition (ALD 2024) Aug 4 – 7 Helsinki
Flash Memory Summit Aug 6 – 8 Santa Clara, CA
USENIX Security Symposium Aug 14 – 16 Philadelphia, PA
SPIE Optics + Photonics 2024 Aug 18 – 22 San Diego, CA
Cadence Cloud Tech Day Aug 20 San Jose, CA
Hot Chips 2024 Aug 25- 27 Stanford University/ Hybrid
Optica Online Industry Meeting: PIC Manufacturing, Packaging and Testing (imec) Aug 27 Online
SEMICON Taiwan Sep 4 -6 Taipei
DVCON Taiwan Sep 10 – 11 Hsinchu
AI HW and Edge AI Summit Sep 9 – 12 San Jose, CA
GSA Executive Forum Sep 26 Menlo Park, CA
SPIE Photomask Technology + EUVL Sep 29 – Oct 3 Monterey, CA
Strategic Materials Conference: SMC 2024 Sep 30 – Oct 2 San Jose, CA
Find All Upcoming Events Here

Upcoming webinars are here, including topics such as quantum safe cryptography, analytics for high-volume manufacturing, and mastering EMC simulations for electronic design.

Find Semiconductor Engineering’s latest newsletters here:

Automotive, Security and Pervasive Computing
Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials

 

The post Chip Industry Week in Review appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week In ReviewThe SE Staff
    BAE Systems and GlobalFoundries are teaming up to strengthen the supply of chips for national security programs, aligning technology roadmaps and collaborating on innovation and manufacturing. Focus areas include advanced packaging, GaN-on-silicon chips, silicon photonics, and advanced technology process development. Onsemi plans to build a $2 billion silicon carbide production plant in the Czech Republic. The site would produce smart power semiconductors for electric vehicles, renewable energy
     

Chip Industry Week In Review

21. Červen 2024 v 09:01

BAE Systems and GlobalFoundries are teaming up to strengthen the supply of chips for national security programs, aligning technology roadmaps and collaborating on innovation and manufacturing. Focus areas include advanced packaging, GaN-on-silicon chips, silicon photonics, and advanced technology process development.

Onsemi plans to build a $2 billion silicon carbide production plant in the Czech Republic. The site would produce smart power semiconductors for electric vehicles, renewable energy technology, and data centers.

The global chip manufacturing industry is projected to boost capacity by 6% in 2024 and 7% in 2025, reaching 33.7 million 8-inch (200mm) wafers per month, according to SEMIs latest World Fab Forecast report. Leading-edge capacity for 5nm nodes and below is expected to grow by 13% in 2024, driven by AI demand for data center applications. Additionally, Intel, Samsung, and TSMC will begin producing 2nm chips using gate-all-around (GAA) FETs next year, boosting leading-edge capacity by 17% in 2025.

At the IEEE Symposium on VLSI Technology & Circuits, imec introduced:

  • Functional CMOS-based CFETs with stacked bottom and top source/drain contacts.
  • CMOS-based 56Gb/s zero-IF D-band beamforming transmitters to support next-gen short-range, high-speed wireless services at frequencies above 100GHz.
  • ADCs for base stations and handsets, a key step toward scalable, high-performance beyond-5G solutions, such as cloud-based AI and extended reality apps.

Quick links to more news:

Global
In-Depth
Market Reports
Education and Training
Security
Product News
Research
Events and Further Reading


Global

Wolfspeed postponed plans to construct a $3 billion chip plant in Germany, underscoring the EU‘s challenges in boosting semiconductor production, reports Reuters. The North Carolina-based company cited reduced capital spending due to a weakened EV market, saying it now aims to start construction in mid-2025, two years later than 0riginally planned.

Micron is building a pilot production line for high-bandwidth memory (HBM) in the U.S., and considering HBM production in Malaysia to meet growing AI demand, according to a Nikkei report. The company is expanding HBM R&D facilities in Boise, Idaho, and eyeing production capacity in Malaysia, while also enhancing its largest HBM facility in Taichung, Taiwan.

Kioxia restored its Yokkaichi and Kitakami plants in Japan to full capacity, ending production cuts as the memory market recovers, according to Nikkei. The company, which is focusing on NAND flash production, has secured new bank credit support, including refinancing a ¥540 billion loan and establishing a ¥210 billion credit line. Kioxia had reduced output by more than 30% in October 2022 due to weak smartphone demand.

Europe’s NATO Innovation Fund announced its first direct investments, which includes semiconductor materials. Twenty-three NATO allies co-invested in this over $1B fund devoted to address critical defense and security challenges.

The second meeting of the U.S.India Initiative on Critical and Emerging Technology (iCET) was held in New Delhi, with various funding and initiatives announced to support semiconductor technology, next-gen telecommunications, connected and autonomous vehicles, ML, and more.

Amazon announced investments of €10 billion in Germany to drive innovation and support the expansion of its logistics network and cloud infrastructure.

Quantum Machines opened the Israeli Quantum Computing Center (IQCC) research facility, backed by the Israel Innovation Authority and located at Tel Aviv University. Also, Israel-based Classiq is collaborating with NVIDIA and BMW, using quantum computing to find the optimal automotive architecture of electrical and mechanical systems.

Global data center vacancy rates are at historic lows, and power availability is becoming less available, according to a Siemens report featured on Broadband Breakfast. The company called for an influx of financing to find new ways to optimize data center technology and sustainability.


In-Depth

Semiconductor Engineering published its Manufacturing, Packaging & Materials newsletter this week, featuring these top stories:

More reporting this week:


Market Reports

Renesas completed its acquisition of Transphorm and will immediately start offering GaN-based power products and reference designs to meet the demand for wide-bandgap (WBG) chips.

Revenues for the top five wafer fab equipment (WFE) companies fell 9% YoY in Q1 2024, according to Counterpoint. This was offset partially by increased demand for NAND and DRAM, which increased 33% YoY, and strong growth in sales to China, which were up 116% YoY.

The SiC power devices industry saw robust growth in 2023, primarily driven by the BEV market, according to TrendForce. The top five suppliers, led by ST with a 32.6% market share and onsemi in second place, accounted for 91.9% of total revenue. However, the anticipated slowdown in BEV sales and weakening industrial demand are expected to significantly decelerate revenue growth in 2024. 

About 30% of vehicles produced globally will have E/E architectures with zonal controllers by 2032, according to McKinsey & Co. The market for automotive micro-components and logic semiconductors is predicted to reach $60 billion in 2032, and the overall automotive semiconductor market is expected to grow from $60 billion to $140 billion in the same period, at a 10% CAGR.

The automotive processor market generated US$20 billion in revenue in 2023, according to Yole. US$7.8 billion was from APUs and FPGAs and $12.2 billion was from MCUs. The ADAS and infotainment processors market was worth US$7.8 billion in 2023 and is predicted to grow to $16.4 billion by 2029 at a 13% CAGR. The market for ADAS sensing is expected to grow at a 7% CAGR.


Security

The CHERI Alliance was established to drive adoption of memory safety and scalable software compartmentalization via the security technology CHERI, or Capability Hardware Enhanced RISC Instructions. Founding members include Capabilities Limited, Codasip, the FreeBSD Foundation, lowRISC, SCI Semiconductor, and the University of Cambridge.

In security research:

  • Japan and China researchers explored a NAND-XOR ring oscillator structure to design an entropy source architecture for a true random number generator (TRNG).
  • University of Toronto and Carleton University researchers presented a survey examining how hardware is applied to achieve security and how reported attacks have exploited certain defects in hardware.
  • University of North Texas and Texas Woman’s University researchers explored the potential of hardware security primitive Physical Unclonable Functions (PUF) for mitigation of visual deepfakes.
  • Villanova University researchers proposed the Boolean DERIVativE attack, which generalizes Boolean domain leakage.

Post-quantum cryptography firm PQShield raised $37 million in Series B funding.

Former OpenAI executive, Ilya Sutskever, who quit over safety concerns, launched Safe Superintelligence Inc. (SSI).

EU industry groups warned the European Commission that its proposed cybersecurity certification scheme (EUCS) for cloud services should not discriminate against Amazon, Google, and Microsoft, reported Reuters.

Cyber Europe tested EU cyber preparedness in the energy sector by simulating a series of large-scale cyber incidents in an exercise organized by the European Union Agency for Cybersecurity (ENISA).

The Cybersecurity and Infrastructure Security Agency (CISA) issued a number of alerts/advisories.


Education and Training

New York non-profit NY CREATES and South Korea’s National Nano Fab Center partnered to develop a hub for joint research, aligned technology services, testbed support, and an engineer exchange program to bolster chips-centered R&D, workforce development, and each nation’s high-tech ecosystem.

New York and the Netherlands agreed on a partnership to promote sustainability within the semiconductor industry, enhance workforce development, and boost semiconductor R&D.

Rapidus is set to send 200 engineers to AI chip developer Tenstorrent in the U.S. for training over the next five years, reports Nikkei. This initiative, led by Japan’s Leading-edge Semiconductor Technology Center (LSTC), aims to bolster Japan’s AI chip industry.


Product News

UMC announced its 22nm embedded high voltage (eHV) technology platform for premium smartphone and mobile device displays. The 22eHV platform reduces core device power consumption by up to 30% compared to previous 28nm processes. Die area is reduced by 10% with the industry’s smallest SRAM bit cells.​

Alphawave Semi announced a new 9.2 Gbps HBM3E sub-system silicon platform capable of 1.2 terabytes per second. Based on the HBM3E IP, the sub-system is aimed at addressing the demand for ultra-high-speed connectivity in high-performance compute applications.

Movellus introduced the Aeonic Power product family for on-die voltage regulation, targeting the challenging area of power delivery.

Cadence partnered with Semiwise and sureCore to develop new cryogenic CMOS circuits with possible quantum computing applications. The circuits are based on modified transistors found in the Cadence Spectre Simulation Platform and are capable of processing analog, mixed-signal, and digital circuit simulation and verification at cryogenic temperatures.

Renesas launched R-Car Open Access (RoX), an integrated development platform for software-defined vehicles (SDVs), designed for Renesas R-Car SoCs and MCUs with tools for deployment of AI applications, reducing complexity and saving time and money for car OEMs and Tier 1s.

Infineon released industry-first radiation-hardened 1 and 2 Mb parallel interface ferroelectric-RAM (F-RAM) nonvolatile memory devices, with up to 120 years of data retention at 85-degree Celsius, along with random access and full memory write at bus speeds. Plus, a CoolGaN Transistor 700 V G4 product family for efficient power conversion up to 700 V, ideal for consumer chargers and notebook adapters, data center power supplies, renewable energy inverters, and more.

Ansys adopted NVIDIA’s Omniverse application programming interfaces for its multi-die chip designers. Those APIs will be used for 5G/6G, IoT, AI/ML, cloud computing, and autonomous vehicle applications. The company also announced ConceptEV, an SaaS solution for automotive concept design for EVs.

Fig. 1: Field visualization of 3D-IC with Omniverse. Source: Ansys

QP Technologies announced a new dicing saw for its manufacturing line that can process a full cassette of 300mm wafers 7% faster than existing tools, improving throughput and productivity.

NXP introduced its SAF9xxx of audio DSPs to support the demand for AI-based audio in software-defined vehicles (SDVs) by using Cadence’s Tensilica HiFi 5 DSPs combined with dedicated neural-network engines and hardware-based accelerators.

Avionyx, a provider of software lifecycle engineering in the aerospace and safety-critical systems sector, partnered with Siemens and will leverage its Polarion application lifecycle management (ALM) tool. Also, Dovetail Electric Aviation adopted Siemens Xcelerator to support sustainable aviation.


Research

Researchers from imec and KU Leuven released a +70 page paper “Selecting Alternative Metals for Advanced Interconnects,” addressing interconnect resistance and reliability.

A comprehensive review article — “Future of plasma etching for microelectronics: Challenges and opportunities” — was created by a team of experts from the University of Maryland, Lam Research, IBM, Intel, and many others.

Researchers from the Institut Polytechnique de Paris’s Laboratory of Condensed Matter for Physics developed an approach to investigate defects in semiconductors. The team “determined the spin-dependent electronic structure linked to defects in the arrangement of semiconductor atoms,” the first time this structure has been measured, according to a release.

Lawrence Berkeley National Laboratory-led researchers developed a small enclosed chamber that can hold all the components of an electrochemical reaction, which can be paired with transmission electron microscopy (TEM) to generate precise views of a reaction at atomic scale, and can be frozen to stop the reaction at specific time points. They used the technique to study a copper catalyst.

The Federal Drug Administration (FDA) approved a clinical trial to test a device with 1,024 nanoscale sensors that records brain activity during surgery, developed by engineers at the University of California San Diego (UC San Diego).


Events and Further Reading

Find upcoming chip industry events here, including:

Event Date Location
Standards for Chiplet Design with 3DIC Packaging (Part 2) Jun 21 Online
DAC 2024 Jun 23 – 27 San Francisco
RISC-V Summit Europe 2024 Jun 24 – 28 Munich
Leti Innovation Days 2024 Jun 25 – 27 Grenoble, France
ISCA 2024 Jun 29 – Jul 3 Buenos Aires, Argentina
SEMICON West Jul 9 – 11 San Francisco
Flash Memory Summit Aug 6 – 8 Santa Clara, CA
USENIX Security Symposium Aug 14 – 16 Philadelphia, PA
Hot Chips 2024 Aug 25- 27 Stanford University
Find All Upcoming Events Here

Upcoming webinars are here.

Semiconductor Engineering’s latest newsletters:

Automotive, Security and Pervasive Computing
Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials


The post Chip Industry Week In Review appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week In ReviewThe SE Staff
    Synopsys refocused its security priorities around chips, striking a deal to sell off its Software Integrity Group subsidiary to private equity firms Clearlake Capital Group and Francisco Partners for about $2.1 billion. That deal comes on the heels of Synopsys’ recent acquisition of Intrinsic ID, which develops physical unclonable function IP. Sassine Ghazi, Synopsys’ president and CEO, said in an interview that the sale of the software group “gives us the ability to have management bandwidth, c
     

Chip Industry Week In Review

10. Květen 2024 v 09:01

Synopsys refocused its security priorities around chips, striking a deal to sell off its Software Integrity Group subsidiary to private equity firms Clearlake Capital Group and Francisco Partners for about $2.1 billion. That deal comes on the heels of Synopsys’ recent acquisition of Intrinsic ID, which develops physical unclonable function IP. Sassine Ghazi, Synopsys’ president and CEO, said in an interview that the sale of the software group “gives us the ability to have management bandwidth, capital, and to double down on what we’re doing in our core business.”

The U.S. Commerce Department reportedly pulled export licenses from Intel and Qualcomm that permitted them to ship semiconductors to Huawei, the Financial Times reported. The move comes after advanced chips from Intel reportedly were used in new laptops and smartphones from the China-based company. 

Apple debuted its second-generation 3nm M4 chip with the launch of the new iPad Pro. The CPU and GPU each have up to 10 cores, with a neural engine capable of 38 TOPS, and a total of 28 billion transistors. Apple also is working with TSMC to develop its own AI processors for running software in data centers, reports The Wall Street Journal.

The U.S. is expected to triple its semiconductor manufacturing capacity by 2032, according to a new report by the Semiconductor Industry Association and Boston Consulting. By that year, the U.S. is projected to have 28% of global capacity for advanced logic manufacturing and over a quarter of total global capital expenditures.

Fig. 1: Source: Semiconductor Industry Association and Boston Consulting Group.

Quick links to more news:

Global
Market Reports
Automotive
Security
Product News
Education and Training
Research
In-Depth
Events
Further Reading

Around The Globe

The U.S. Commerce Department plans to solicit bids from organizations interested in creating and managing a new CHIPS Manufacturing USA institute focused on digital twins in the semiconductor sector. The government will award up to $285 million to the selected proposal.

The U.S. National Science Foundation and Department of Energy announced the first 35 projects to be supported with computational time through the National Artificial Intelligence Research Resource (NAIRR) Pilot. The initial selected projects will gain access to several U.S. supercomputing centers and other resources, with the goal of advancing responsible AI research.

Through its new Federal AI Sandbox, MITRE is offering up its computing power to U.S. government agencies. “Our new Federal AI Sandbox will help level the playing field, making the high-quality compute power needed to train and test custom AI solutions available to any agency,” stated Charles Clancy, MITRE, senior vice president and chief technology officer, in the release.

Saudi Arabia’s $100 billion investment fund for semiconductor and AI technology pledged it would divest from China if requested by the U.S, reported Bloomberg.

Japan’s SoftBank is holding talks with UK-based AI Chip firm Graphcore about a possible acquisition, reports Bloomberg.

India’s chip industry is heating up. Mindgrove launched the country’s first SoC, named Secure IoT. The chip clocks at 700 MHz, and the company is touting its key security algorithms, secure boot, and on-chip OTP memory. Meanwhile, Lam Research is expanding its global semiconductor fabrication supply chain to include India.

Microsoft will build a $3.3 billion AI data center in Racine, Wisconsin, the same location as the failed Foxconn investment touted six years ago.

Markets And Money

The SIA announced first-quarter global semiconductor sales grew more than 15% YoY, still 5.7% below Q4 2023, but a big improvement over last year. Consider that the semiconductor materials market contracted 8.2% in 2023 to $66.7 billion, down from a record $72.7 billion in 2022, according to a new report from SEMI.

The demand for AI-powered consumer electronics will drive global AI chipset shipments to 1.3 billion by 2030, according to ABI Research.

TrendForce released several new industry reports this week. Among the highlights:

  • HBM prices are expected to increase by up to 10% in 2025, representing more than 30% of total DRAM value.
  • In Q2, DRAM contract prices rose 13% to 18%, while NAND flash prices increased 15% to 20%.
  • The top 10 design firms’ combined revenue increased 12% in 2023, with NVIDIA taking the lead for the first time.

A number of acquisitions were announced recently:

  • High-voltage IC company, Power Integrations, will purchase the assets of Odyssey Semiconductor Technologies, a developer of gallium nitride (GaN) transistors.
  • Mobix Labs agreed to buy RF design company RaGE Systems for $20 million in cash, stock, and incentives.
  • V-Tek, a packaging services and inspection company, acquired A&J Programming, a manufacturer of automated handling and programming equipment.

The global smartphone market grew 6% year-over-year, shipping 296.9 million units in Q124, according to a Counterpoint report.  Samsung toppled Apple for the top spot with a 20% share.

Automotive

U.S. Justice Department is investigating whether Tesla committed securities or wire fraud for misleading consumers and investors about its EV’s autopilot capabilities, according to Reuters.

The automotive ecosystem is undergoing a huge transformation toward software-defined vehicles, spurring new architectures that can be future-proofed and customized with software.

Infineon introduced a microcontroller for the automotive battery management sector, integrating high-precision analog and high-voltage subsystems on a single chip. Infineon also inked a deal with China’s Xiaomi to provide SiC power modules for Xiaomi’s new SU7 smart EV.

Keysight and ETAS are teaming up to embed ETAS fuzz testing software into Keysight’s automotive cybersecurity platform.

Also, Keysight’s device security research lab, Riscure Security Solutions, can now conduct vehicle type approval evaluations under United Nations R155/R156 regulations. Keysight acquired Riscure in March.

Two autonomous driving companies received big funding. British AI company Wayve received a $1.05 billion Series C investment from SoftBank, with contributions from NVIDIA and Microsoft. Hyundai spent an additional $475 million on Motional, according its recent earnings report.

The automotive imaging market grew to U.S. $5.7 billion in 2023 due to increased production, autonomy demand, and higher-resolution offerings.

Automotive Grade Linux (AGL), a collaborative cross-industry effort developing an open source platform for all Software-Defined Vehicles (SDVs), released cloud-native functionality, RISC-V architecture and flutter applications.

Security

SRAM security concerns are intensifying as a combination of new and existing techniques allow hackers to tap into data for longer periods of time after a device is powered down. This is particularly alarming as the leading edge of design shifts to heterogeneous systems in package, where chiplets frequently have their own memory hierarchy.

Machine learning is being used by hackers to find weaknesses in chips and systems, but it also is starting to be used to prevent breaches by pinpointing hardware and software design flaws.

txOne Networks, provider of Cyber-Physical Systems security, raised $51 million in Series B extension round of funding.

The U.S. Department of Justice charged a Russian national with his role as the creator, developer and administrator of the LockBit, a prolific ramsomware group, that allegedly stole $100 million in payments from 2,000 victims.

The Cybersecurity and Infrastructure Security Agency (CISA) launched “We Can Secure Our World,” a new public awareness program promoting “basic cyber hygiene” and the agency also issues a number of alerts/advisories.

Product News

Siemens unveiled its Solido IP Validation Suite software, an automated quality assurance product designed to work across all design IP types and formats. The suite includes Solido Crosscheck and IPdelta software, which both provide in-view, cross-view and version-to-version QA checks.

proteanTecs announced its lifecycle monitoring solution is being integrated into SAPEON’s new AI processors.

SpiNNcloud Systems revealed their SpiNNaker2 system, an event-based AI platform supercomputer containing chips that are a mesh of 152 ARM-based cores. The platform has the ability to emulate 10 billion neurons while still maintaining power efficiency and reliability.

Ansys partnered with Schrodinger to develop new computational materials. The collaboration will see Schrodinger’s molecular modeling technology used in Ansys’ simulation tools to evaluate performance ahead of the prototype phase.

Keysight introduced a pulse generator to its handheld radio frequency analyzer software options. The Option 357 pulse generator is downloadable on B- and C-Series FieldFox analyzers.

Education and Training

Semiconductor fever is hitting academia:

  • Penn State discussed its role in leading 15 universities to drive advances in chip integration and packaging.
  • Georgia Tech’s explained its research is happening at all the levels of the “semiconductor stack,” touting its 28,500 square feet of academic cleanroom space.
  • And in the past month Purdue University, Dassault Systems and Lam Research expanded an existing deal to use virtual twins and simulation tools in workforce development.

Arizona State University is beefing up their technology programs with a new bachelor’s and doctoral degree in robotics and autonomous systems.

Microsoft is partnering with Gateway Technical College in Wisconsin to create a Data Center Academy to train Wisconsinites for data center and STEM roles by 2030.

Research

Stanford-led researchers used ordinary-appearing glasses for an augmented reality headset, utilizing waveguide display techniques, holographic imaging, and AI.

UC Berkeley, LLNL, and MIT engineered a miniaturized on-chip energy storage and power delivery, using an atomic-scale approach to modify electrostatic capacitors.

ORNL and other researchers observed a “surprising isotope effect in the optoelectronic properties of a single layer of molybdenum disulfide” when they substituted heavier isotope of molybdenum in the crystal.

Three U.S. national labs are partnering with NVIDIA to develop advanced memory technologies for high performance computing.

In-Depth

In addition to this week’s Automotive, Security and Pervasive Computing newsletter, here are more top stories and tech talk from the week:

Events

Find upcoming chip industry events here, including:

Event Date Location
ASMC: Advanced Semiconductor Manufacturing Conference May 13 – 16 Albany, NY
ISES Taiwan 2024: International Semiconductor Executive Summit May 14 – 15 New Taipei City
Ansys Simulation World 2024 May 14 – 16 Online
Women In Semiconductors May 16 Albany, NY
European Test Symposium May 20 – 24 The Hague, Netherlands
NI Connect Austin 2024 May 20 – 22 Austin, Texas
ITF World 2024 (imec) May 21 – 22 Antwerp, Belgium
Embedded Vision Summit May 21 – 23 Santa Clara, CA
ASIP Virtual Seminar 2024 May 22 Online
Electronic Components and Technology Conference (ECTC) 2024 May 28 – 31 Denver, Colorado
Hardwear.io Security Trainings and Conference USA 2024 May 28 – Jun 1 Santa Clara, CA
Find All Upcoming Events Here

Upcoming webinars are here.

Further Reading

Read the latest special reports and top stories, or check out the latest newsletters:

Automotive, Security and Pervasive Computing
Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials

The post Chip Industry Week In Review appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week In ReviewThe SE Staff
    Synopsys refocused its security priorities around chips, striking a deal to sell off its Software Integrity Group subsidiary to private equity firms Clearlake Capital Group and Francisco Partners for about $2.1 billion. That deal comes on the heels of Synopsys’ recent acquisition of Intrinsic ID, which develops physical unclonable function IP. Sassine Ghazi, Synopsys’ president and CEO, said in an interview that the sale of the software group “gives us the ability to have management bandwidth, c
     

Chip Industry Week In Review

10. Květen 2024 v 09:01

Synopsys refocused its security priorities around chips, striking a deal to sell off its Software Integrity Group subsidiary to private equity firms Clearlake Capital Group and Francisco Partners for about $2.1 billion. That deal comes on the heels of Synopsys’ recent acquisition of Intrinsic ID, which develops physical unclonable function IP. Sassine Ghazi, Synopsys’ president and CEO, said in an interview that the sale of the software group “gives us the ability to have management bandwidth, capital, and to double down on what we’re doing in our core business.”

The U.S. Commerce Department reportedly pulled export licenses from Intel and Qualcomm that permitted them to ship semiconductors to Huawei, the Financial Times reported. The move comes after advanced chips from Intel reportedly were used in new laptops and smartphones from the China-based company. 

Apple debuted its second-generation 3nm M4 chip with the launch of the new iPad Pro. The CPU and GPU each have up to 10 cores, with a neural engine capable of 38 TOPS, and a total of 28 billion transistors. Apple also is working with TSMC to develop its own AI processors for running software in data centers, reports The Wall Street Journal.

The U.S. is expected to triple its semiconductor manufacturing capacity by 2032, according to a new report by the Semiconductor Industry Association and Boston Consulting. By that year, the U.S. is projected to have 28% of global capacity for advanced logic manufacturing and over a quarter of total global capital expenditures.

Fig. 1: Source: Semiconductor Industry Association and Boston Consulting Group.

Quick links to more news:

Global
Market Reports
Automotive
Security
Product News
Education and Training
Research
In-Depth
Events
Further Reading

Around The Globe

The U.S. Commerce Department plans to solicit bids from organizations interested in creating and managing a new CHIPS Manufacturing USA institute focused on digital twins in the semiconductor sector. The government will award up to $285 million to the selected proposal.

The U.S. National Science Foundation and Department of Energy announced the first 35 projects to be supported with computational time through the National Artificial Intelligence Research Resource (NAIRR) Pilot. The initial selected projects will gain access to several U.S. supercomputing centers and other resources, with the goal of advancing responsible AI research.

Through its new Federal AI Sandbox, MITRE is offering up its computing power to U.S. government agencies. “Our new Federal AI Sandbox will help level the playing field, making the high-quality compute power needed to train and test custom AI solutions available to any agency,” stated Charles Clancy, MITRE, senior vice president and chief technology officer, in the release.

Saudi Arabia’s $100 billion investment fund for semiconductor and AI technology pledged it would divest from China if requested by the U.S, reported Bloomberg.

Japan’s SoftBank is holding talks with UK-based AI Chip firm Graphcore about a possible acquisition, reports Bloomberg.

India’s chip industry is heating up. Mindgrove launched the country’s first SoC, named Secure IoT. The chip clocks at 700 MHz, and the company is touting its key security algorithms, secure boot, and on-chip OTP memory. Meanwhile, Lam Research is expanding its global semiconductor fabrication supply chain to include India.

Microsoft will build a $3.3 billion AI data center in Racine, Wisconsin, the same location as the failed Foxconn investment touted six years ago.

Markets And Money

The SIA announced first-quarter global semiconductor sales grew more than 15% YoY, still 5.7% below Q4 2023, but a big improvement over last year. Consider that the semiconductor materials market contracted 8.2% in 2023 to $66.7 billion, down from a record $72.7 billion in 2022, according to a new report from SEMI.

The demand for AI-powered consumer electronics will drive global AI chipset shipments to 1.3 billion by 2030, according to ABI Research.

TrendForce released several new industry reports this week. Among the highlights:

  • HBM prices are expected to increase by up to 10% in 2025, representing more than 30% of total DRAM value.
  • In Q2, DRAM contract prices rose 13% to 18%, while NAND flash prices increased 15% to 20%.
  • The top 10 design firms’ combined revenue increased 12% in 2023, with NVIDIA taking the lead for the first time.

A number of acquisitions were announced recently:

  • High-voltage IC company, Power Integrations, will purchase the assets of Odyssey Semiconductor Technologies, a developer of gallium nitride (GaN) transistors.
  • Mobix Labs agreed to buy RF design company RaGE Systems for $20 million in cash, stock, and incentives.
  • V-Tek, a packaging services and inspection company, acquired A&J Programming, a manufacturer of automated handling and programming equipment.

The global smartphone market grew 6% year-over-year, shipping 296.9 million units in Q124, according to a Counterpoint report.  Samsung toppled Apple for the top spot with a 20% share.

Automotive

U.S. Justice Department is investigating whether Tesla committed securities or wire fraud for misleading consumers and investors about its EV’s autopilot capabilities, according to Reuters.

The automotive ecosystem is undergoing a huge transformation toward software-defined vehicles, spurring new architectures that can be future-proofed and customized with software.

Infineon introduced a microcontroller for the automotive battery management sector, integrating high-precision analog and high-voltage subsystems on a single chip. Infineon also inked a deal with China’s Xiaomi to provide SiC power modules for Xiaomi’s new SU7 smart EV.

Keysight and ETAS are teaming up to embed ETAS fuzz testing software into Keysight’s automotive cybersecurity platform.

Also, Keysight’s device security research lab, Riscure Security Solutions, can now conduct vehicle type approval evaluations under United Nations R155/R156 regulations. Keysight acquired Riscure in March.

Two autonomous driving companies received big funding. British AI company Wayve received a $1.05 billion Series C investment from SoftBank, with contributions from NVIDIA and Microsoft. Hyundai spent an additional $475 million on Motional, according its recent earnings report.

The automotive imaging market grew to U.S. $5.7 billion in 2023 due to increased production, autonomy demand, and higher-resolution offerings.

Automotive Grade Linux (AGL), a collaborative cross-industry effort developing an open source platform for all Software-Defined Vehicles (SDVs), released cloud-native functionality, RISC-V architecture and flutter applications.

Security

SRAM security concerns are intensifying as a combination of new and existing techniques allow hackers to tap into data for longer periods of time after a device is powered down. This is particularly alarming as the leading edge of design shifts to heterogeneous systems in package, where chiplets frequently have their own memory hierarchy.

Machine learning is being used by hackers to find weaknesses in chips and systems, but it also is starting to be used to prevent breaches by pinpointing hardware and software design flaws.

txOne Networks, provider of Cyber-Physical Systems security, raised $51 million in Series B extension round of funding.

The U.S. Department of Justice charged a Russian national with his role as the creator, developer and administrator of the LockBit, a prolific ramsomware group, that allegedly stole $100 million in payments from 2,000 victims.

The Cybersecurity and Infrastructure Security Agency (CISA) launched “We Can Secure Our World,” a new public awareness program promoting “basic cyber hygiene” and the agency also issues a number of alerts/advisories.

Product News

Siemens unveiled its Solido IP Validation Suite software, an automated quality assurance product designed to work across all design IP types and formats. The suite includes Solido Crosscheck and IPdelta software, which both provide in-view, cross-view and version-to-version QA checks.

proteanTecs announced its lifecycle monitoring solution is being integrated into SAPEON’s new AI processors.

SpiNNcloud Systems revealed their SpiNNaker2 system, an event-based AI platform supercomputer containing chips that are a mesh of 152 ARM-based cores. The platform has the ability to emulate 10 billion neurons while still maintaining power efficiency and reliability.

Ansys partnered with Schrodinger to develop new computational materials. The collaboration will see Schrodinger’s molecular modeling technology used in Ansys’ simulation tools to evaluate performance ahead of the prototype phase.

Keysight introduced a pulse generator to its handheld radio frequency analyzer software options. The Option 357 pulse generator is downloadable on B- and C-Series FieldFox analyzers.

Education and Training

Semiconductor fever is hitting academia:

  • Penn State discussed its role in leading 15 universities to drive advances in chip integration and packaging.
  • Georgia Tech’s explained its research is happening at all the levels of the “semiconductor stack,” touting its 28,500 square feet of academic cleanroom space.
  • And in the past month Purdue University, Dassault Systems and Lam Research expanded an existing deal to use virtual twins and simulation tools in workforce development.

Arizona State University is beefing up their technology programs with a new bachelor’s and doctoral degree in robotics and autonomous systems.

Microsoft is partnering with Gateway Technical College in Wisconsin to create a Data Center Academy to train Wisconsinites for data center and STEM roles by 2030.

Research

Stanford-led researchers used ordinary-appearing glasses for an augmented reality headset, utilizing waveguide display techniques, holographic imaging, and AI.

UC Berkeley, LLNL, and MIT engineered a miniaturized on-chip energy storage and power delivery, using an atomic-scale approach to modify electrostatic capacitors.

ORNL and other researchers observed a “surprising isotope effect in the optoelectronic properties of a single layer of molybdenum disulfide” when they substituted heavier isotope of molybdenum in the crystal.

Three U.S. national labs are partnering with NVIDIA to develop advanced memory technologies for high performance computing.

In-Depth

In addition to this week’s Automotive, Security and Pervasive Computing newsletter, here are more top stories and tech talk from the week:

Events

Find upcoming chip industry events here, including:

Event Date Location
ASMC: Advanced Semiconductor Manufacturing Conference May 13 – 16 Albany, NY
ISES Taiwan 2024: International Semiconductor Executive Summit May 14 – 15 New Taipei City
Ansys Simulation World 2024 May 14 – 16 Online
Women In Semiconductors May 16 Albany, NY
European Test Symposium May 20 – 24 The Hague, Netherlands
NI Connect Austin 2024 May 20 – 22 Austin, Texas
ITF World 2024 (imec) May 21 – 22 Antwerp, Belgium
Embedded Vision Summit May 21 – 23 Santa Clara, CA
ASIP Virtual Seminar 2024 May 22 Online
Electronic Components and Technology Conference (ECTC) 2024 May 28 – 31 Denver, Colorado
Hardwear.io Security Trainings and Conference USA 2024 May 28 – Jun 1 Santa Clara, CA
Find All Upcoming Events Here

Upcoming webinars are here.

Further Reading

Read the latest special reports and top stories, or check out the latest newsletters:

Automotive, Security and Pervasive Computing
Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials

The post Chip Industry Week In Review appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Predicting And Preventing Process DriftGregory Haley
    Increasingly tight tolerances and rigorous demands for quality are forcing chipmakers and equipment manufacturers to ferret out minor process variances, which can create significant anomalies in device behavior and render a device non-functional. In the past, many of these variances were ignored. But for a growing number of applications, that’s no longer possible. Even minor fluctuations in deposition rates during a chemical vapor deposition (CVD) process, for example, can lead to inconsistencie
     

Predicting And Preventing Process Drift

22. Duben 2024 v 09:05

Increasingly tight tolerances and rigorous demands for quality are forcing chipmakers and equipment manufacturers to ferret out minor process variances, which can create significant anomalies in device behavior and render a device non-functional.

In the past, many of these variances were ignored. But for a growing number of applications, that’s no longer possible. Even minor fluctuations in deposition rates during a chemical vapor deposition (CVD) process, for example, can lead to inconsistencies in layer uniformity, which can impact the electrical isolation properties essential for reliable circuit operation. Similarly, slight variations in a photolithography step can cause alignment issues between layers, leading to shorts or open circuits in the final device.

Some of these variances can be attributed to process error, but more frequently they stem from process drift — the gradual deviation of process parameters from their set points. Drift can occur in any of the hundreds of process steps involved in manufacturing a single wafer, subtly altering the electrical properties of chips and leading to functional and reliability issues. In highly complex and sensitive ICs, even the slightest deviations can cause defects in the end product.

“All fabs already know drift. They understand drift. They would just like a better way to deal with drift,” said David Park, vice president of marketing at Tignis. “It doesn’t matter whether it’s lithography, CMP (chemical mechanical polishing), CVD or PVD (chemical/physical vapor deposition), they’re all going to have drift. And it’s all going to happen at various rates because they are different process steps.”

At advanced nodes and in dense advanced packages, where a nanometer can be critical, controlling process drift is vital for maintaining high yield and ensuring profitability. By rigorously monitoring and correcting for drift, engineers can ensure that production consistently meets quality standards, thereby maximizing yield and minimizing waste.

“Monitoring and controlling hundreds of thousands of sensors in a typical fab requires the ability to handle petabytes of real-time data from a large variety of tools,” said Vivek Jain, principal product manager, smart manufacturing at Synopsys. “Fabs can only control parameters or behaviors they can measure and analyze. They use statistical analysis and error budget breakdowns to define upper control limits (UCLs) and lower control limits (LCLs) to monitor the stability of measured process parameters and behaviors.”

Dialing in legacy fabs
In legacy fabs — primarily 200mm — most of the chips use 180nm or older process technology, so process drift does not need to be as precisely monitored as in the more advanced 300mm counterparts. Nonetheless, significant divergence can lead to disparities in device performance and reliability, creating a cascade of operational challenges.

Manufacturers operating at older technology nodes might lack the sophisticated, real-time monitoring and control methods that are standard in cutting-edge fabs. While the latter have embraced ML to predict and correct for drift, many legacy operations still rely heavily on periodic manual checks and adjustments. Thus, the management of process drift in these settings is reactive rather than proactive, making changes after problems are detected rather than preventing them.

“There is a separation between 300-millimeter and 200-millimeter fabs,” said Park. “The 300-millimeter guys are all doing some version of machine learning. Sometimes it’s called advanced process control, and sometimes it’s actually AI-powered process control. For some of the 200-millimeter fabs with more mature process nodes, they basically have a recipe they set and a bunch of technicians looking at machines and looking at the CDs. When the drift happens, they go through their process recipe and manually adjust for the out-of-control processes, and that’s just what they’ve always done. It works for them.”

For these older fabs, however, the repercussions of process drift can be substantial. Minor deviations in process parameters, such as temperature or pressure during the deposition or etching phases, gradually can lead to changes in the physical structure of the semiconductor devices. Over time, these minute alterations can compound, resulting in layers of materials that deviate from their intended characteristics. Such deviations affect critical dimensions and ultimately can compromise the electrical performance of the chip, leading to slower processing speeds, higher power consumption, or outright device failure.

The reliability equation is equally impacted by process drift. Chips are expected to operate consistently over extended periods, often under a range of environmental conditions. However, when process-induced variability can weaken the device’s resilience, precipitating early wear-out mechanisms and reducing its lifetime. In situations where dependability is non-negotiable, such as in automotive or medical applications, those variations can have dire consequences.

But with hundreds of process steps for a typical IC, eliminating all variability in fabs is simply not feasible.

“Process drift is never going to not happen, because the processes are going to have some sort of side effect,” Park said. “The machines go out of spec and things like pumps and valves and all sorts of things need to be replaced. You’re still going to have preventive maintenance (PM). But if the critical dimensions are being managed correctly, which is typically what triggers the drift, you can go a longer period of time between cleanings or the scheduled PMs and get more capacity.”

Process drift pitfalls
Managing process drift in semiconductor manufacturing presents several complex challenges. Hysteresis, for example, is a phenomenon where the output of a process varies not solely because of current input conditions, but also based on the history of the states through which the process already has passed. This memory effect can significantly complicate precision control, as materials and equipment might not reset to a baseline state after each operational cycle. Consequently, adjustments that were effective in previous cycles may not yield the same outcomes due to accumulated discrepancies.

One common cause of hysteresis is thermal cycling, where repeated heating and cooling create mechanical stresses. Those stresses can be additive, releasing inconsistently based on temperature history.  That, in turn, can lead to permanent changes in the output of a circuit, such as a voltage reference, which affects its precision and stability.

In many field-effect transistors (FETs), hysteresis also can occur due to charge trapping. This happens when charges are captured in ‘trap states’ within the semiconductor material or at the interface with another material, such as an oxide layer. The trapped charges then can modulate the threshold voltage of the device over time and under different electrical biases, potentially leading to operational instability and variability in device performance.

Human factors also play a critical role in process drift, with errors stemming from incorrect settings adjustments, mishandling of materials, misinterpretation of operational data, or delayed responses to process anomalies. Such errors, though often minor, can lead to substantial variations in manufacturing processes, impacting the consistency and reliability of semiconductor devices.

“Once in production, the biggest source of variability is human error or inconsistency during maintenance,” said Russell Dover, general manager of service product line at Lam Research. “Wet clean optimization (WCO) and machine learning through equipment intelligence solutions can help address this.”

The integration of new equipment into existing production lines introduces additional complexities. New machinery often features increased speed, throughput, and tighter tolerances, but it must be integrated thoughtfully to maintain the stringent specifications required by existing product lines. This is primarily because the specifications and performance metrics of legacy chips have been long established and are deeply integrated into various applications with pre-existing datasheets.

“From an equipment supplier perspective, we focus on tool matching,” said Dover. “That includes manufacturing and installing tools to be identical within specification, ensuring they are set up and running identically — and then bringing to bear systems, tooling, software and domain knowledge to ensure they are maintained and remain as identical as possible.”

The inherent variability of new equipment, even those with advanced capabilities, requires careful calibration and standardization.

“Some equipment, like transmission electron microscopes, are incredibly powerful,” said Jian-Min Zuo, a materials science and engineering professor at the University of Illinois’ Grainger College of Engineering. “But they are also very finicky, depending on how you tune the machine. How you set it up under specific conditions may vary slightly every time. So there are a number of things that can be done when you try to standardize those procedures, and also standardize the equipment. One example is to generate a curate, like a certain type of test case, where you can collect data from different settings and make sure you’re taking into account the variability in the instruments.”

Process drift solutions
As semiconductor manufacturers grapple with the complexities of process drift, a diverse array of strategies and tools has emerged to address the problem. Advanced process control (APC) systems equipped with real-time monitoring capabilities can extract patterns and predictive insights from massive data sets gathered from various sensors throughout the manufacturing process.

By understanding the relationships between different process variables, APC can predict potential deviations before they result in defects. This predictive capability enables the system to make autonomous adjustments to process parameters in real-time, ensuring that each process step remains within the defined control limits. Essentially, APC acts as a dynamic feedback mechanism that continuously fine-tunes the production process.

Fig. 1: Reduced process drift with AI/ML advanced process control. Source: Tignis

Fig. 1: Reduced process drift with AI/ML advanced process control. Source: Tignis

While APC proactively manages and optimizes the process to prevent deviations, fault detection and classification (FDC) reacts to deviations by detecting and classifying any faults that still occur.

FDC data serves as an advanced early-warning system. This system monitors the myriad parameters and signals during the chip fabrication process, rapidly detecting any variances that could indicate a malfunction or defect in the production line. The classification component of FDC is particularly crucial, as it does more than just flag potential issues. It categorizes each detected fault based on its characteristics and probable causes, vastly simplifying the trouble-shooting process. This allows engineers to swiftly pinpoint the type of intervention needed, whether it’s recalibrating instruments, altering processing recipes, or conducting maintenance repairs.

Statistical process control (SPC) is primarily focused on monitoring and controlling process variations using statistical methods to ensure the process operates efficiently and produces output that meets quality standards. SPC involves plotting data in real-time against control limits on control charts, which are statistically determined to represent the expected normal process behavior. When process measurements stray outside these control limits, it signals that the process may be out of control due to special causes of variation, requiring investigation and correction. SPC is inherently proactive and preventive, aiming to detect potential problems before they result in product defects.

“Statistical process control (SPC) has been a fundamental methodology for the semiconductor industry almost from its very foundation, as there are two core factors supporting the need,” said Dover. “The first is the need for consistent quality, meaning every product needs to be as near identical as possible, and second, the very high manufacturing volume of chips produced creates an excellent workspace for statistical techniques.”

While SPC, FDC, and APC might seem to serve different purposes, they are deeply interconnected. SPC provides the baseline by monitoring process stability and quality over time, setting the stage for effective process control. FDC complements SPC by providing the tools to quickly detect and address anomalies and faults that occur despite the preventive measures put in place by SPC. APC takes insights from both SPC and FDC to adjust process parameters proactively, not just to correct deviations but also to optimize process performance continually.

Despite their benefits, integrating SPC, FDC and APC systems into existing semiconductor manufacturing environments can pose challenges. These systems require extensive configuration and tuning to adapt to specific manufacturing conditions and to interface effectively with other process control systems. Additionally, the success of these systems depends on the quality and granularity of the data they receive, necessitating high-fidelity sensors and a robust data management infrastructure.

“For SPC to be effective you need tight control limits,” adds Dover. “A common trap in the world of SPC is to keep adding control charts (by adding new signals or statistics) during a process ramp, or maybe inheriting old practices from prior nodes without validating their relevance. The result can be millions of control charts running in parallel. It is not a stretch to state that if you are managing a million control charts you are not really controlling much, as it is humanly impossible to synthesize and react to a million control charts on a daily basis.”

This is where AI/ML becomes invaluable, because it can monitor the performance and sustainability of the new equipment more efficiently than traditional methods. By analyzing data from the new machinery, AI/ML can confirm observations, such as reduced accumulation, allowing for adjustments to preventive maintenance schedules that differ from older equipment. This capability not only helps in maintaining the new equipment more effectively but also in optimizing the manufacturing process to take full advantage of the technological upgrades.

AI/ML also facilitate a smoother transition when integrating new equipment, particularly in scenarios involving ‘copy exact’ processes where the goal is to replicate production conditions across different equipment setups. AI and ML can analyze the specific outputs and performance variations of the new equipment compared to the established systems, reducing the time and effort required to achieve optimal settings while ensuring that the new machinery enhances production without compromising the quality and reliability of the legacy chips being produced.

AI/ML
Being more proactive in identifying drift and adjusting parameters in real-time is a necessity. With a very accurate model of the process, you can tune your recipe to minimize that variability and improve both quality and yield.

“The ability to quickly visualize a month’s worth of data in seconds, and be able to look at windows of time, is a huge cost savings because it’s a lot more involved to get data for the technicians or their process engineers to try and figure out what’s wrong,” said Park. “AI/ML has a twofold effect, where you have fewer false alarms, and just fewer alarms in general. So you’re not wasting time looking at things that you shouldn’t have to look at in the first place. But when you do find issues, AI/ML can help you get to the root cause in the diagnostics associated with that much more quickly.”

When there is a real alert, AI/ML offers the ability to correlate multiple parameters and inputs that are driving that alert.

“Traditional process control systems monitor each parameter separately or perform multivariate analysis for key parameters that require significant effort from fab engineers,” adds Jain. “With the amount of fab data scaling exponentially, it is becoming humanly impossible to extract all the actionable insights from the data. Machine learning and artificial intelligence can handle big data generated within a fab to provide effective process control with minimal oversight.”

AI/ML also can look for more other ways of predicting when the drift is going to take your process out of specification. Those correlations can be bivariate and multivariate, as well as univariate. And a machine learning engine that is able to sift through tremendous amounts of data and a larger number of variables than most humans also can turn up some interesting correlations.

“Another benefit of AI/ML is troubleshooting when something does trigger an alarm or alert,” adds Park. “You’ve got SPC and FDC that people are using, and a lot of them have false positives, or false alerts. In some cases, it’s as high as 40% of the alerts that you get are not relevant for what you’re doing. This is where AI/ML becomes vital. It’s never going to take false alerts to zero, but it can significantly reduce the amount of false alerts that you have.”

Engaging with these modern drift solutions, such as AI/ML-based systems, is not mere adherence to industry trends but an essential step towards sustainable semiconductor production. Going beyond the mere mitigation of process drift, these technologies empower manufacturers to optimize operations and maintain the consistency of critical dimensions, allowed by the intelligent analysis of extensive data and automation of complex control processes.

Conclusion
Monitoring process drift is essential for maintaining quality of the device being manufactured, but it also can ensure that the entire fabrication lifecycle operates at peak efficiency. Detecting and managing process drift is a significant challenge in volume production because these variables can be subtle and may compound over time. This makes identifying the root cause of any drift difficult, particularly when measurements are only taken at the end of the production process.

Combating these challenges requires a vigilant approach to process control, regular equipment servicing, and the implementation of AI/ML algorithms that can assist in predicting and correcting for drift. In addition, fostering a culture of continuous improvement and technological adaptation is crucial. Manufacturers must embrace a mindset that prioritizes not only reactive measures, but also proactive strategies to anticipate and mitigate process drift before it affects the production line. This includes training personnel to handle new technologies effectively and to understand the dynamics of process control deeply. Such education enables staff to better recognize early signs of drift and respond swiftly and accurately.

Moreover, the integration of comprehensive data analytics platforms can revolutionize how fabs monitor and analyze the vast amounts of data they generate. These platforms can aggregate data from multiple sources, providing a holistic view of the manufacturing process that is not possible with isolated measurements. With these insights, engineers can refine their process models, enhance predictive maintenance schedules, and optimize the entire production flow to reduce waste and improve yields.

Related Reading
Tackling Variability With AI-Based Process Control
How AI in advanced process control reduces equipment variability and corrects for process drift.

The post Predicting And Preventing Process Drift appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Enabling Advanced Devices With Atomic Layer ProcessesKatherine Derbyshire
    Atomic layer deposition (ALD) used to be considered too slow to be of practical use in semiconductor manufacturing, but it has emerged as a critical tool for both transistor and interconnect fabrication at the most advanced nodes. ALD can be speeded up somewhat, but the real shift is the rising value of precise composition and thickness control at the most advanced nodes, which makes the extra time spent on deposition worthwhile. ALD is a close cousin of chemical vapor deposition, initially intr
     

Enabling Advanced Devices With Atomic Layer Processes

Atomic layer deposition (ALD) used to be considered too slow to be of practical use in semiconductor manufacturing, but it has emerged as a critical tool for both transistor and interconnect fabrication at the most advanced nodes.

ALD can be speeded up somewhat, but the real shift is the rising value of precise composition and thickness control at the most advanced nodes, which makes the extra time spent on deposition worthwhile.

ALD is a close cousin of chemical vapor deposition, initially introduced in high volume to the semiconductor industry for hafnium oxide (high-k) gate dielectrics. Both CVD and ALD are inherently conformal processes. Deposition occurs on all surfaces exposed to a precursor gas. In ALD, though, the reaction is self-limiting.

The process works like this: First, a precursor gas (A) is introduced into the process chamber, where it adsorbs onto all available substrate sites. No further adsorption occurs once all surface sites are occupied. An inert purge gas, typically nitrogen or argon, flushes out any remaining precursor gas, then a second precursor (B) is introduced. Precursor B reacts with the chemisorbed precursor A to produce the desired film. Once all of the adsorbed molecules are consumed, the reaction stops. After a second purge step, the cycle repeats.

ALD opportunities expand as features shrink
The step-by-step nature of ALD is both its strength and its weakness. Depositing one monolayer at a time gives manufacturers extremely precise thickness control. Using different precursor gases in different ratios can tune the film composition. Unfortunately, the repeated precursor/purge gas cycles take a lot of time. In an interview, CEA-Leti researcher Rémy Gassilloud estimated that in a single wafer process, two minutes per wafer is the maximum cost-effective process time. But two minutes is only enough time to deposit about a 2nm-thick film.

Some process adjustments can improve throughput. Silicon dioxide ALD often uses large furnaces to process many wafers at once. Plasma activation can ionize reagents and accelerate film formation. Still, Gassilloud estimates that 10nm is the maximum practical thickness for ALD films.

As transistors shrink, though, the number of layers in that thickness range is increasing. Transistor structures also are becoming more complex, requiring deposition on vertical surfaces, into deep trenches, and other places not readily accessible by line-of-sight PVD methods. Replacement gates for gate-all-around transistors, for instance, need a process that can fill nanometer-scale cavities.

As noted above, HfO2 was the first successful application of ALD in semiconductor manufacturing. Its precursors, HfCl4 and water, are both chemically simple small molecules, whose by-products are volatile and easily removed. Such simple chemistries are the exception, though. ALD of silicon dioxide typically uses aminosilane precursors.⁠[1] Metal nitrides often have complex metal-organic precursor gases. Gassilloud noted that ligands might be added to a precursor molecule to change its vapor pressure or reactivity, or to facilitate adhesion to the substrate. In selective deposition processes, discussed below, ligands might improve selectivity between growth and non-growth surfaces. These larger molecules can be difficult to insinuate into smaller features, and byproducts can be difficult to remove. Complex byproducts can also become a contamination source.

One of the advantages of ALD is its very low process temperature, typically between 200°C and 300°C. It is thermally compatible with both transistor and interconnect processes in CMOS, as well as with deposition on plastic and other novel substrates. Even so, Aditya Kumar and colleagues at GlobalFoundries showed that precise temperature control is important.[2] TDMAT (tetrakis- dimethylamino titanium) condensation in a TiN deposition process was a significant source of particle defects. To maintain the desired process temperature, both the precursor and purge gas temperatures matter. Introducing cold purge gas into a warm process chamber can cause rapid condensation.

As ALD has become a mainstream process, the industry has found applications for it beyond core device materials, in a variety of sacrificial and spacer layers. For example, double- and quadruple-patterning schemes often use ALD for “pitch-doubling.” By depositing a spacer material on either side of a patterned “mandrel,” then removing the mandrel, the process can cut the original pitch in half without the need for an additional, more costly lithography step.[3]

Fig. 1: Self-aligned double patterning with ALD spacers. Source: IOPScience

Fig. 1: Self-aligned double patterning with ALD spacers. Source: Creative Commons

Depositing a doped oxide on the vertical silicon fins of a finFET device is a less directional and less damaging alternative to ion implantation.[4]

Selective deposition brings lateral control
These last two examples depend on surface characteristics to mediate deposition. A precursor might adhere more readily to a hard mask than to the underlying material. The vertical face of a silicon fin might offer more (or fewer) adsorption sites than the horizontal face. Selective deposition on more complicated structures may require a pre-deposited growth template, functionalizing substrate regions to encourage or discourage growth. Selective deposition is especially important in interconnect applications. In general, though, a comprehensive review by Rong Chen and colleagues at Huazhong University of Science and Technology explained that selective deposition methods need to replenish the template material as the film grows while needing a mechanism to selectively remove the unwanted material.⁠[5]

For example, tungsten preferentially deposits on silicon relative to SiO2, but the selectivity diminishes after only a few cycles. Researchers at North Carolina State University successfully re-passivated the oxide by incorporating hydrogen into the tungsten precursor.[⁠6] Similarly, a group at Eindhoven University of Technology found that SiO2 preferentially deposited on SiO2 relative to other oxides for only 10 to 15 cycles. A so-called ABC-cycle — adding acetylacetone (“Inhibitor A”) as an inhibitor every 5 to 10 cycles — restored selectivity.⁠[7]

Alternatively, or in addition, atomic layer etching (ALE) might be used to remove unwanted material. ALE operates in the same step-by-step manner as ALD. The first half of a cycle reacts with the existing surface, weakening the bond to the underlying material. Then, a second step — typically ion bombardment — removes the weakened layer. For example, in ALE etching of silicon, chlorine gas reacts with the surface to form various SiClx compounds. The chlorination process weakens the inter-silicon bonds between the surface and the bulk, and the chlorinated layer is easily sputtered away. The layer-by-layer nature of ALE depends on preferential removal of the surface material relative to the bulk (SiClx vs. Si in this case). The “ALE window” is the combination of energy and temperature at which the surface layer is completely removed without damaging the underlying material.

Somewhat counter-intuitively, Keren Kanarik and colleagues at Lam Research found that higher ion energies actually expanded the ALE window for silicon etching. High ion energies with short exposure times delayed the onset of silicon sputtering relative to conventional RIE.[8]

Adding and subtracting, one atomic layer at a time
For a long time, the semiconductor industry has been looking for alternatives to process schemes that deposit material, pattern it, then etch most of it away. Wouldn’t it be simpler to only deposit the material we will ultimately need? Meanwhile, atomic layer deposition has been filling the spaces under nanosheets and inside cavities. Bulk deposition and etch tools are still with us, and will be for the foreseeable future. In more and more cases, though, those tools provide the frame while ALD and ALE processes fill in the details.

Correction: Corrected attribution of the work on ABC cycles and selective deposition of SiO2.

References

  1. Wenling Li, et al., “Impact of aminosilane and silanol precursor structure on atomic layer deposition process,”Applied Surface Science, Vol 621, 2023,156869, https://doi.org/10.1016/j.apsusc.2023.156869.
  2. Kumar, et al., “ALD TiN Surface Defect Reduction for 12nm and Beyond Technologies,” 2020 31st Annual SEMI Advanced Semiconductor Manufacturing Conference (ASMC), Saratoga Springs, NY, USA, 2020, pp. 1-4, doi: 10.1109/ASMC49169.2020.9185271.
  3. Shohei Yamauchi, et al., “Extendibility of self-aligned type multiple patterning for further scaling”, Proc. SPIE 8682, Advances in Resist Materials and Processing Technology XXX, 86821D (29 March 2013); https://doi.org/10.1117/12.2011953
  4. Kalkofen, et al., “Atomic layer deposition of phosphorus oxide films as solid sources for doping of semiconductor structures,” 2018 IEEE 18th International Conference on Nanotechnology (IEEE-NANO), Cork, Ireland, 2018, pp. 1-4, doi: 10.1109/NANO.2018.8626235.
  5. Rong Chen et al., “Atomic level deposition to extend Moore’s law and beyond,” 2020 Int. J. Extrem. Manuf. 2 022002 DOI 10.1088/2631-7990/ab83e0
  6. B Kalanyan, et al., “Using hydrogen to expand the inherent substrate selectivity window during tungsten atomic layer deposition,” 2016 Chem. Mater. 28 117–26 https://doi.org/10.1021/acs.chemmater.5b03319
  7. Alfredo Mameli et al., “Area-Selective Atomic Layer Deposition of SiO2 Using Acetylacetone as a Chemoselective Inhibitor in an ABC-Type Cycle” ACS Nano 2017, 11, 9, 9303–9311. https://doi.org/10.1021/acsnano.7b04701
  8. Keren J. Kanarik, et al., “Universal scaling relationship for atomic layer etching,” J. Vac. Sci. Technol. A 39, 010401 (2021); doi: 10.1116/6.0000762

The post Enabling Advanced Devices With Atomic Layer Processes appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Exploring Process Scenarios To Improve DRAM Device PerformanceYu De Chen
    In the world of advanced semiconductor fabrication, creating precise device profiles (edge shapes) is an important step in achieving targeted on-chip electrical performance. For example, saddle fin profiles in a DRAM memory device must be precisely fabricated during process development in order to avoid memory performance issues. Saddle fins were introduced in DRAM devices to increase channel length, prevent short channel effects, and increase data retention times. Critical process equipment set
     

Exploring Process Scenarios To Improve DRAM Device Performance

18. Duben 2024 v 09:04

In the world of advanced semiconductor fabrication, creating precise device profiles (edge shapes) is an important step in achieving targeted on-chip electrical performance. For example, saddle fin profiles in a DRAM memory device must be precisely fabricated during process development in order to avoid memory performance issues. Saddle fins were introduced in DRAM devices to increase channel length, prevent short channel effects, and increase data retention times. Critical process equipment settings like etch selectivity, or the gas ratio of the etch process, can significantly impact the shape of fabricated saddle fin profiles. These process and profile changes have significant impact on DRAM device performance. It can be challenging to explore all possible saddle fin profile combinations using traditional silicon testing, since wafer-based testing is time-consuming and expensive. To address this issue, virtual fabrication software (SEMulator3D) can be used to test different saddle fin profile shapes without the time and cost of wafer-based development. In this article, we will review an example of using virtual fabrication for DRAM saddle fin profile development. We will also assess DRAM device performance under different saddle fin profile conditions. This methodology can be used to guide process and integration teams in the development of process recipes and specifications for DRAM devices.

The challenge of exploring different profiles

Imagine that you are a DRAM process engineer, and have received nominal process conditions, device specifications and a target saddle fin profile for a new DRAM design. You would like to explore some different process options and saddle fin profiles to improve the performance of your DRAM device. What should you do? This is a common situation for integration and process engineers during the early R&D stages of DRAM process development.

Traditional methods of exploring saddle fin profiles are difficult and sometimes impractical. These methods involve the creation of a series of unique saddle fin profiles on silicon wafers. The process is time-consuming, expensive, and in many cases impractical, due to the large number of scenarios that must be tested.

One solution to these challenges is to use virtual fabrication. SEMulator3D allows us to create and analyze saddle fin profiles within a virtual environment and to subsequently extract and compare device characteristics of these different profiles. The strength of this approach is its ability to accurately simulate the real-world performance of these devices, but to do so faster and less-expensively than using wafer-based testing.

Methodology

Let’s dive into the methodology behind our approach:

Creating saddle fin profiles in a virtual environment

First, we input the design data and process flow (or process steps) for our device in SEMulator3D. The software can then generate a “virtual” 3D DRAM structure and provide a visualization of saddle fin profiles (figure 1). In figure 1(a), a full 3D DRAM structure including the entire simulation domain is displayed. To enable detailed device study, we have cropped a small portion of the simulation domain from this large 3D area. In figure 1(b), we have extracted a cross sectional view of the saddle fin structure, which can be modified by varying a set of multi-etch steps in the process model. The section of the saddle fin that we would like to modify is identified as the “AA” (active area). We can finely tune the etch taper angle, AA/fin CD, fin height, taper angle and additional nominal device parameters to modify the AA profile.

Figure 1: Process flow set up by SEMulator3D containing 3 figures marked A,B and C. Figure A contains a 3D simulated DRAM structure, with metals, nitrides, oxides and silicon structures shown in different colors. Figure B contains a cross section view of the saddle fin, with the bitline, active area, CC and wordline areas highlighted in the figure. Figure C highlights the key specifications of the saddle fin profile that can will be changed during simulation, including the etch taper angle, AA/fin CD, fin height, and taper angle to modify the saddle fin profile and shape.

Fig. 1: Process flow set up by SEMulator3D: (a) DRAM structure and (b) Cross section view of saddle fin along with key specifications of the saddle fin profile.

Using the structures that we have built in SEMulator3D, we can next assign dopants and ports to the simulated structure and perform electrical performance evaluation. Accurately assigning dopant species, and defining dopant concentrations within the structure, is critical to ensuring the accuracy of our simulation. In figure 2(a), we display a dopant concentration distribution generated in SEMulator3D.

Ports are contact points in the model which are used to apply or extract electrical signals during a device study. Proper assignment of the ports is very important. Figure 2(b) provides an example of port assignment in our test DRAM structure. By accurately assigning the ports and dopants, we can extract the device’s electrical characteristics under different process scenarios.

Figure 2: Dopant concentration and Port Setup for the DRAM device, marked at Figures 2A and 2B. In Figure 2(a), we display a dopant concentration distribution generated in SEMulator3D. The highest dopant concentration is found in the center of the device, shown in red and yellow. Figure 2(b) provides an example of port assignment in our test DRAM structure, with assignments shown against a device cross-section. Ports are assigned at the drain, source and gate of the device.

Fig. 2: (a) Dopant concentration and (b) Port assignments (in blue).

Manufacturability validation

It is important to ensure that our simulation models match real world results. We can validate our model against cross-sectional images (SEM or TEM images) from an actual fabricated device. To ensure that our simulated device matches the behavior of an actual manufactured chip, we can create real silicon test wafers containing DRAM structures with different saddle fin profiles. To study different saddle fin profiles, we will use different etch recipes on an etch machine to vary the DRAM wordline etch step. This allows us to create specific saddle fin profiles in silicon that can be compared to our simulated profiles. A process engineer can change etch recipes and easily create silicon-based etch profiles that match simulated cross section images, as shown in figure 3. In this case, the engineer created a nominal (Process of Record) profile, a “round” profile (with a rounded top), and a triangular shaped profile (with a triangular top). This wafer-based data is not only used to test electrical performance of the DRAM under different saddle fin profile conditions, but can also be fed back into the virtual model to calibrate the model and ensure that it is accurate during future use.

Figure 3: Cross section TEM/SEM images of saddle fin profiles taken from actual silicon devices are displayed, compared to the predicted model results from SEMulator3D. 3 side-by-side TEM images are shown for the saddle fin profiles vs. the model results, for : (a) Nominal condition (Process of Record), (b) Round profile and (c) Triangle profile

Fig. 3: Cross section images vs. models: (a) Nominal condition (Process of Record), (b) Round profile and (c) Triangle profile.

Device simulation and validation

In the final stage of our study, we will review the electrical simulation results for different saddle fin profile shapes. Figure 4 displays simulated electrical performance results for the round profile and triangular saddle fin profile. For each of the two profiles, the value of the transistor Subthreshold Swing (SS), On Current (Ion), and Threshold Voltage (Vt) are displayed, with the differences shown. Process integration engineers can use this type of simulation to compare device performance using different process approaches. The same electrical performance differences (trend) were seen on actual fabricated devices, validating the accuracy and reliability of our simulation approach.

Figure 4: Simulated electrical performance results for the round profile and triangular saddle fin profile. For each of the two profiles, the value of the transistor Subthreshold Swing (SS), On Current (Ion), and Threshold Voltage (Vt) are displayed, with the differences shown.

Fig. 4: Device electrical simulation results: the transistor performance difference between the Round and Triangular Saddle Fin profile is shown for Subthreshold Swing (SS), On Current (Ion) and Threshold Voltage (Vt).

Conclusions

SEMulator3D provides numerous benefits for the semiconductor manufacturing industry. It allows process integration teams to understand device performance under different process scenarios, and lets them easily explore new processes and architectural opportunities. In this article, we reviewed an example of how virtual fabrication can be used to assess DRAM device performance under different saddle fin profile conditions. Figure 5 displays a summary of the virtual fabrication process, and how we used it to understand, optimize and validate different process scenarios.

Figure 5: A summary of the virtual fabrication process undertaken in this study, including model setup, followed by an exploration of process conditions, followed by electrical analysis and final silicon verification. This process is circular, with the ability to repeat the loop as new information is collected.

Fig. 5: Summary of virtual fabrication process.

Virtual fabrication can be used to guide process and integration teams in the development of process recipes and specifications for any new memory or logic device, and to do so at greater speed and lower cost than silicon-based experimentation.

The post Exploring Process Scenarios To Improve DRAM Device Performance appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Enabling Advanced Devices With Atomic Layer ProcessesKatherine Derbyshire
    Atomic layer deposition (ALD) used to be considered too slow to be of practical use in semiconductor manufacturing, but it has emerged as a critical tool for both transistor and interconnect fabrication at the most advanced nodes. ALD can be speeded up somewhat, but the real shift is the rising value of precise composition and thickness control at the most advanced nodes, which makes the extra time spent on deposition worthwhile. ALD is a close cousin of chemical vapor deposition, initially intr
     

Enabling Advanced Devices With Atomic Layer Processes

Atomic layer deposition (ALD) used to be considered too slow to be of practical use in semiconductor manufacturing, but it has emerged as a critical tool for both transistor and interconnect fabrication at the most advanced nodes.

ALD can be speeded up somewhat, but the real shift is the rising value of precise composition and thickness control at the most advanced nodes, which makes the extra time spent on deposition worthwhile.

ALD is a close cousin of chemical vapor deposition, initially introduced in high volume to the semiconductor industry for hafnium oxide (high-k) gate dielectrics. Both CVD and ALD are inherently conformal processes. Deposition occurs on all surfaces exposed to a precursor gas. In ALD, though, the reaction is self-limiting.

The process works like this: First, a precursor gas (A) is introduced into the process chamber, where it adsorbs onto all available substrate sites. No further adsorption occurs once all surface sites are occupied. An inert purge gas, typically nitrogen or argon, flushes out any remaining precursor gas, then a second precursor (B) is introduced. Precursor B reacts with the chemisorbed precursor A to produce the desired film. Once all of the adsorbed molecules are consumed, the reaction stops. After a second purge step, the cycle repeats.

ALD opportunities expand as features shrink
The step-by-step nature of ALD is both its strength and its weakness. Depositing one monolayer at a time gives manufacturers extremely precise thickness control. Using different precursor gases in different ratios can tune the film composition. Unfortunately, the repeated precursor/purge gas cycles take a lot of time. In an interview, CEA-Leti researcher Rémy Gassilloud estimated that in a single wafer process, two minutes per wafer is the maximum cost-effective process time. But two minutes is only enough time to deposit about a 2nm-thick film.

Some process adjustments can improve throughput. Silicon dioxide ALD often uses large furnaces to process many wafers at once. Plasma activation can ionize reagents and accelerate film formation. Still, Gassilloud estimates that 10nm is the maximum practical thickness for ALD films.

As transistors shrink, though, the number of layers in that thickness range is increasing. Transistor structures also are becoming more complex, requiring deposition on vertical surfaces, into deep trenches, and other places not readily accessible by line-of-sight PVD methods. Replacement gates for gate-all-around transistors, for instance, need a process that can fill nanometer-scale cavities.

As noted above, HfO2 was the first successful application of ALD in semiconductor manufacturing. Its precursors, HfCl4 and water, are both chemically simple small molecules, whose by-products are volatile and easily removed. Such simple chemistries are the exception, though. ALD of silicon dioxide typically uses aminosilane precursors.⁠[1] Metal nitrides often have complex metal-organic precursor gases. Gassilloud noted that ligands might be added to a precursor molecule to change its vapor pressure or reactivity, or to facilitate adhesion to the substrate. In selective deposition processes, discussed below, ligands might improve selectivity between growth and non-growth surfaces. These larger molecules can be difficult to insinuate into smaller features, and byproducts can be difficult to remove. Complex byproducts can also become a contamination source.

One of the advantages of ALD is its very low process temperature, typically between 200°C and 300°C. It is thermally compatible with both transistor and interconnect processes in CMOS, as well as with deposition on plastic and other novel substrates. Even so, Aditya Kumar and colleagues at GlobalFoundries showed that precise temperature control is important.[2] TDMAT (tetrakis- dimethylamino titanium) condensation in a TiN deposition process was a significant source of particle defects. To maintain the desired process temperature, both the precursor and purge gas temperatures matter. Introducing cold purge gas into a warm process chamber can cause rapid condensation.

As ALD has become a mainstream process, the industry has found applications for it beyond core device materials, in a variety of sacrificial and spacer layers. For example, double- and quadruple-patterning schemes often use ALD for “pitch-doubling.” By depositing a spacer material on either side of a patterned “mandrel,” then removing the mandrel, the process can cut the original pitch in half without the need for an additional, more costly lithography step.[3]

Fig. 1: Self-aligned double patterning with ALD spacers. Source: IOPScience

Fig. 1: Self-aligned double patterning with ALD spacers. Source: Creative Commons

Depositing a doped oxide on the vertical silicon fins of a finFET device is a less directional and less damaging alternative to ion implantation.[4]

Selective deposition brings lateral control
These last two examples depend on surface characteristics to mediate deposition. A precursor might adhere more readily to a hard mask than to the underlying material. The vertical face of a silicon fin might offer more (or fewer) adsorption sites than the horizontal face. Selective deposition on more complicated structures may require a pre-deposited growth template, functionalizing substrate regions to encourage or discourage growth. Selective deposition is especially important in interconnect applications. In general, though, a comprehensive review by Rong Chen and colleagues at Huazhong University of Science and Technology explained that selective deposition methods need to replenish the template material as the film grows while needing a mechanism to selectively remove the unwanted material.⁠[5]

For example, tungsten preferentially deposits on silicon relative to SiO2, but the selectivity diminishes after only a few cycles. Researchers at North Carolina State University successfully re-passivated the oxide by incorporating hydrogen into the tungsten precursor.[⁠6] Similarly, a group at Argonne National Laboratory found that SiO2 preferentially deposited on SiO2 relative to other oxides for only 10 to 15 cycles. Adding acetylacetone (“Precursor C”) as an inhibitor every 5 to 10 cycles — restored selectivity.⁠[7]

Alternatively, or in addition, atomic layer etching (ALE) might be used to remove unwanted material. ALE operates in the same step-by-step manner as ALD. The first half of a cycle reacts with the existing surface, weakening the bond to the underlying material. Then, a second step — typically ion bombardment — removes the weakened layer. For example, in ALE etching of silicon, chlorine gas reacts with the surface to form various SiClx compounds. The chlorination process weakens the inter-silicon bonds between the surface and the bulk, and the chlorinated layer is easily sputtered away. The layer-by-layer nature of ALE depends on preferential removal of the surface material relative to the bulk (SiClx vs. Si in this case). The “ALE window” is the combination of energy and temperature at which the surface layer is completely removed without damaging the underlying material.

Somewhat counter-intuitively, Keren Kanarik and colleagues at Lam Research found that higher ion energies actually expanded the ALE window for silicon etching. High ion energies with short exposure times delayed the onset of silicon sputtering relative to conventional RIE.[8]

Adding and subtracting, one atomic layer at a time
For a long time, the semiconductor industry has been looking for alternatives to process schemes that deposit material, pattern it, then etch most of it away. Wouldn’t it be simpler to only deposit the material we will ultimately need? Meanwhile, atomic layer deposition has been filling the spaces under nanosheets and inside cavities. Bulk deposition and etch tools are still with us, and will be for the foreseeable future. In more and more cases, though, those tools provide the frame while ALD and ALE processes fill in the details.

References

  1. Wenling Li, et al., “Impact of aminosilane and silanol precursor structure on atomic layer deposition process,”Applied Surface Science, Vol 621, 2023,156869, https://doi.org/10.1016/j.apsusc.2023.156869.
  2. Kumar, et al., “ALD TiN Surface Defect Reduction for 12nm and Beyond Technologies,” 2020 31st Annual SEMI Advanced Semiconductor Manufacturing Conference (ASMC), Saratoga Springs, NY, USA, 2020, pp. 1-4, doi: 10.1109/ASMC49169.2020.9185271.
  3. Shohei Yamauchi, et al., “Extendibility of self-aligned type multiple patterning for further scaling”, Proc. SPIE 8682, Advances in Resist Materials and Processing Technology XXX, 86821D (29 March 2013); https://doi.org/10.1117/12.2011953
  4. Kalkofen, et al., “Atomic layer deposition of phosphorus oxide films as solid sources for doping of semiconductor structures,” 2018 IEEE 18th International Conference on Nanotechnology (IEEE-NANO), Cork, Ireland, 2018, pp. 1-4, doi: 10.1109/NANO.2018.8626235.
  5. Rong Chen et al., “Atomic level deposition to extend Moore’s law and beyond,” 2020 Int. J. Extrem. Manuf. 2 022002 DOI 10.1088/2631-7990/ab83e0
  6. B Kalanyan, et al., “Using hydrogen to expand the inherent substrate selectivity window during tungsten atomic layer deposition,” 2016 Chem. Mater. 28 117–26 https://doi.org/10.1021/acs.chemmater.5b03319
  7. Yanguas-Gil A, Libera J A and Elam J W, “Modulation of the growth per cycle in atomic layer deposition using reversible surface functionalization,” 2013 Chem. Mater. 25 4849–60 https://doi.org/10.1021/cm4029098
  8. Keren J. Kanarik, et al., “Universal scaling relationship for atomic layer etching,” J. Vac. Sci. Technol. A 39, 010401 (2021); doi: 10.1116/6.0000762

The post Enabling Advanced Devices With Atomic Layer Processes appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Exploring Process Scenarios To Improve DRAM Device PerformanceYu De Chen
    In the world of advanced semiconductor fabrication, creating precise device profiles (edge shapes) is an important step in achieving targeted on-chip electrical performance. For example, saddle fin profiles in a DRAM memory device must be precisely fabricated during process development in order to avoid memory performance issues. Saddle fins were introduced in DRAM devices to increase channel length, prevent short channel effects, and increase data retention times. Critical process equipment set
     

Exploring Process Scenarios To Improve DRAM Device Performance

18. Duben 2024 v 09:04

In the world of advanced semiconductor fabrication, creating precise device profiles (edge shapes) is an important step in achieving targeted on-chip electrical performance. For example, saddle fin profiles in a DRAM memory device must be precisely fabricated during process development in order to avoid memory performance issues. Saddle fins were introduced in DRAM devices to increase channel length, prevent short channel effects, and increase data retention times. Critical process equipment settings like etch selectivity, or the gas ratio of the etch process, can significantly impact the shape of fabricated saddle fin profiles. These process and profile changes have significant impact on DRAM device performance. It can be challenging to explore all possible saddle fin profile combinations using traditional silicon testing, since wafer-based testing is time-consuming and expensive. To address this issue, virtual fabrication software (SEMulator3D) can be used to test different saddle fin profile shapes without the time and cost of wafer-based development. In this article, we will review an example of using virtual fabrication for DRAM saddle fin profile development. We will also assess DRAM device performance under different saddle fin profile conditions. This methodology can be used to guide process and integration teams in the development of process recipes and specifications for DRAM devices.

The challenge of exploring different profiles

Imagine that you are a DRAM process engineer, and have received nominal process conditions, device specifications and a target saddle fin profile for a new DRAM design. You would like to explore some different process options and saddle fin profiles to improve the performance of your DRAM device. What should you do? This is a common situation for integration and process engineers during the early R&D stages of DRAM process development.

Traditional methods of exploring saddle fin profiles are difficult and sometimes impractical. These methods involve the creation of a series of unique saddle fin profiles on silicon wafers. The process is time-consuming, expensive, and in many cases impractical, due to the large number of scenarios that must be tested.

One solution to these challenges is to use virtual fabrication. SEMulator3D allows us to create and analyze saddle fin profiles within a virtual environment and to subsequently extract and compare device characteristics of these different profiles. The strength of this approach is its ability to accurately simulate the real-world performance of these devices, but to do so faster and less-expensively than using wafer-based testing.

Methodology

Let’s dive into the methodology behind our approach:

Creating saddle fin profiles in a virtual environment

First, we input the design data and process flow (or process steps) for our device in SEMulator3D. The software can then generate a “virtual” 3D DRAM structure and provide a visualization of saddle fin profiles (figure 1). In figure 1(a), a full 3D DRAM structure including the entire simulation domain is displayed. To enable detailed device study, we have cropped a small portion of the simulation domain from this large 3D area. In figure 1(b), we have extracted a cross sectional view of the saddle fin structure, which can be modified by varying a set of multi-etch steps in the process model. The section of the saddle fin that we would like to modify is identified as the “AA” (active area). We can finely tune the etch taper angle, AA/fin CD, fin height, taper angle and additional nominal device parameters to modify the AA profile.

Figure 1: Process flow set up by SEMulator3D containing 3 figures marked A,B and C. Figure A contains a 3D simulated DRAM structure, with metals, nitrides, oxides and silicon structures shown in different colors. Figure B contains a cross section view of the saddle fin, with the bitline, active area, CC and wordline areas highlighted in the figure. Figure C highlights the key specifications of the saddle fin profile that can will be changed during simulation, including the etch taper angle, AA/fin CD, fin height, and taper angle to modify the saddle fin profile and shape.

Fig. 1: Process flow set up by SEMulator3D: (a) DRAM structure and (b) Cross section view of saddle fin along with key specifications of the saddle fin profile.

Using the structures that we have built in SEMulator3D, we can next assign dopants and ports to the simulated structure and perform electrical performance evaluation. Accurately assigning dopant species, and defining dopant concentrations within the structure, is critical to ensuring the accuracy of our simulation. In figure 2(a), we display a dopant concentration distribution generated in SEMulator3D.

Ports are contact points in the model which are used to apply or extract electrical signals during a device study. Proper assignment of the ports is very important. Figure 2(b) provides an example of port assignment in our test DRAM structure. By accurately assigning the ports and dopants, we can extract the device’s electrical characteristics under different process scenarios.

Figure 2: Dopant concentration and Port Setup for the DRAM device, marked at Figures 2A and 2B. In Figure 2(a), we display a dopant concentration distribution generated in SEMulator3D. The highest dopant concentration is found in the center of the device, shown in red and yellow. Figure 2(b) provides an example of port assignment in our test DRAM structure, with assignments shown against a device cross-section. Ports are assigned at the drain, source and gate of the device.

Fig. 2: (a) Dopant concentration and (b) Port assignments (in blue).

Manufacturability validation

It is important to ensure that our simulation models match real world results. We can validate our model against cross-sectional images (SEM or TEM images) from an actual fabricated device. To ensure that our simulated device matches the behavior of an actual manufactured chip, we can create real silicon test wafers containing DRAM structures with different saddle fin profiles. To study different saddle fin profiles, we will use different etch recipes on an etch machine to vary the DRAM wordline etch step. This allows us to create specific saddle fin profiles in silicon that can be compared to our simulated profiles. A process engineer can change etch recipes and easily create silicon-based etch profiles that match simulated cross section images, as shown in figure 3. In this case, the engineer created a nominal (Process of Record) profile, a “round” profile (with a rounded top), and a triangular shaped profile (with a triangular top). This wafer-based data is not only used to test electrical performance of the DRAM under different saddle fin profile conditions, but can also be fed back into the virtual model to calibrate the model and ensure that it is accurate during future use.

Figure 3: Cross section TEM/SEM images of saddle fin profiles taken from actual silicon devices are displayed, compared to the predicted model results from SEMulator3D. 3 side-by-side TEM images are shown for the saddle fin profiles vs. the model results, for : (a) Nominal condition (Process of Record), (b) Round profile and (c) Triangle profile

Fig. 3: Cross section images vs. models: (a) Nominal condition (Process of Record), (b) Round profile and (c) Triangle profile.

Device simulation and validation

In the final stage of our study, we will review the electrical simulation results for different saddle fin profile shapes. Figure 4 displays simulated electrical performance results for the round profile and triangular saddle fin profile. For each of the two profiles, the value of the transistor Subthreshold Swing (SS), On Current (Ion), and Threshold Voltage (Vt) are displayed, with the differences shown. Process integration engineers can use this type of simulation to compare device performance using different process approaches. The same electrical performance differences (trend) were seen on actual fabricated devices, validating the accuracy and reliability of our simulation approach.

Figure 4: Simulated electrical performance results for the round profile and triangular saddle fin profile. For each of the two profiles, the value of the transistor Subthreshold Swing (SS), On Current (Ion), and Threshold Voltage (Vt) are displayed, with the differences shown.

Fig. 4: Device electrical simulation results: the transistor performance difference between the Round and Triangular Saddle Fin profile is shown for Subthreshold Swing (SS), On Current (Ion) and Threshold Voltage (Vt).

Conclusions

SEMulator3D provides numerous benefits for the semiconductor manufacturing industry. It allows process integration teams to understand device performance under different process scenarios, and lets them easily explore new processes and architectural opportunities. In this article, we reviewed an example of how virtual fabrication can be used to assess DRAM device performance under different saddle fin profile conditions. Figure 5 displays a summary of the virtual fabrication process, and how we used it to understand, optimize and validate different process scenarios.

Figure 5: A summary of the virtual fabrication process undertaken in this study, including model setup, followed by an exploration of process conditions, followed by electrical analysis and final silicon verification. This process is circular, with the ability to repeat the loop as new information is collected.

Fig. 5: Summary of virtual fabrication process.

Virtual fabrication can be used to guide process and integration teams in the development of process recipes and specifications for any new memory or logic device, and to do so at greater speed and lower cost than silicon-based experimentation.

The post Exploring Process Scenarios To Improve DRAM Device Performance appeared first on Semiconductor Engineering.

  • ✇Semiconductor Engineering
  • Chip Industry Week In ReviewThe SE Staff
    By Adam Kovac, Gregory Haley, and Liz Allan. Cadence plans to acquire BETA CAE Systems for $1.24 billion, the latest volley in a race to sell multi-physics simulation and analysis across a broad set of customers with deep pockets. Cadence said the deal opens the door to structural analysis for the automotive, aerospace, industrial, and health care sectors. Under the terms of the agreement, 60% of the purchase would be paid in cash, and the remainder in stock. South Korea’s National Intelligence
     

Chip Industry Week In Review

8. Březen 2024 v 09:01

By Adam Kovac, Gregory Haley, and Liz Allan.

Cadence plans to acquire BETA CAE Systems for $1.24 billion, the latest volley in a race to sell multi-physics simulation and analysis across a broad set of customers with deep pockets. Cadence said the deal opens the door to structural analysis for the automotive, aerospace, industrial, and health care sectors. Under the terms of the agreement, 60% of the purchase would be paid in cash, and the remainder in stock.

South Korea’s National Intelligence Service reported that North Korea was targeting cyberattacks at domestic semiconductor equipment companies, using a “living off the land” approach, in which the attacker uses minimal malware to attack common applications installed on the server. That makes it more difficult to spot an attack. According to the government, “In December last year, Company A, and in February this year, Company B, had their configuration management server and security policy server hacked, respectively, and product design drawings and facility site photos were stolen.”

As the memory market goes, so goes the broader chip industry. Last quarter, and heading into early 2024, both markets began showing signs of sustainable growth. DRAM revenue jumped 29.6% in Q4 for a total of $17.46 billion. TrendForce attributed some of that to  new efforts to stockpile chips and strategic production control. NAND flash revenue was up 24.5% in Q4, with solid growth expected to continue into the first part of this year, according to TrendForce. Revenue for the sector topped $11.4 billion in Q4, and it’s expected to grow another 20% this quarter. SSD prices rebounded in Q4, as well, up 15% to $23.1 billion. Across the chip industry, sales grew 15.2% in January compared to the same period in 2023, according to the Semiconductor Industry Association (SIA). This is the largest increase since May 2022, and that trend is expected to continue throughout 2024 with double-digit growth compared to 2023.

Marvell said it is working with TSMC to develop a technology platform for the rapid deployment of analog, mixed-signal, and foundational IP. The company plans to sell both custom and commercial chiplets at 2nm.

The Dutch government is concerned that ASML, the only maker of EUV/high-NA EUV lithography equipment in the world, is considering leaving the Netherlands, according to De Telegraaf.

Quick links to more news:

Design and Power
Manufacturing and Test
Automotive and Batteries
Security
Pervasive Computing and AI
Events

Design and Power

AMD appears to have hit a roadblock with the U.S. Department of Commerce (DoC) over a new AI chip it designed for the Chinese market, as reported by Bloomberg. U.S. officials told the company the new chip is too powerful to be sold without a license.

JEDEC released its new memory standard as a free download on its website. The JESD239 Graphics Double Data Rate SGRAM can reach speeds of 192 GB/s and improve signal-to-noise ratio.

Accellera rolled out its IEEE Std. 1800‑2023 Standard for SystemVerilog—Unified Hardware Design, Specification, and Verification Language, which is now available for free download. The decision to offer it at no cost is due to Accellera’s participation in the IEEE GET Program, which was founded in 2010 with the intention of providing  open access to some standards. Accellera also announced it had approved for release the Verilog-AMS 2023 standard, which offers enhancements to analog constructs, dynamic tolerance for event control statements, and other upgrades.

Chiplets are a hot topic these days. Six industry experts discuss chiplet standards, interoperability, and the need for highly customized AI chiplets.

Optimizing EDA hardware for the cloud can shorten the time required for large and complex simulations, but not all workloads will benefit equally, and much more can be done to improve those that can.

Flex Logix is developing InferX DSP for use with existing EFLX eFPGA from 40nm to 7nm. InferX achieves about 30 times the DSP performance/mm² than eFPGA.

The number of challenges is growing in power semiconductors, just as it is in traditional chips. This tech talk looks at integrating power semiconductors with other devices, different packaging impacts, and how these devices will degrade over time.

Vultr announced it will use NVIDIA’s HGX H100 GPU clusters to expand its Seattle-based cloud data center. The company said the expansion, which will be powered by hydroelectricity, will make the facility one of the cleanest, most power efficient data centers in the country.

Amazon Web Services will expand its presence in Saudi Arabia, announcing a new $5.3 billion infrastructure region in the country that will launch in 2026. The new region will offer developers, entrepreneurs and companies access to healthcare, education and other services.

Google is teaming up with the Geneva Science and Diplomacy Anticipator (GESDA) to launch the XPRIZE Quantum Applications, with a $5 million in prizes for winners who can demonstrate ways to use quantum computing to solve real-world problems. Teams must submit a proposal that includes analysis of how long their algorithm would need to run before reaching a solution to a problem, such as improving drug development or designing new battery materials.

South Korea’s nepes corporation has turned to Siemens EDA for solutions in the development of advanced 3D-IC packages. The deal will see nepes incorporating several Siemens technologies, including the Calibre nmPlatform, Hyperlynx software and Xpedition Substrate Integrator software.

Siemens also formalized a partnership with Nuclei System Technology in which the pair of companies will work together on solution support for Nuclei’s RISC-V processor cores. The collaboration will allow clients to monitor CPU program execution in real-time via Nuclei’s RISC-V CPU Ips.

Keysight and ETS-Lindgren announced a breakthrough test solution for cellular devices using non-terrestrial networks. The solution is capable of measuring and validating the performance of both the transmitter and receiver of devices capable of supporting the network.

Nearly fifty companies raised $800 million for power electronics, data center interconnects, and more last month.

Manufacturing and Test

SEMI Europe issued a position statement to the European Union, warning against additional export controls or rules on foreign investment. SEMI argued that free trade partnerships are a better method for ensuring security than bans or restrictions.

Revenues for the top five wafer fab equipment manufacturers declined 1% YoY in 2023 to $93.5 billion, according to Counterpoint Research. The drop was attributed to weak spending on memory, inventory adjustments, and low demand in consumer electronics. The tide is changing, though.

Bruker closed two acquisitions. One involved Chemspeed Technologies, a Switzerland-based provider of automated laboratory R&D and QC workflow solutions. The second involved Phasefocus, an image processing company based in the UK.

A Swedish company, SCALINQ, released a commercially available large-scale packaging solution capable of controlling quantum devices with hundreds of qubits.

Solid Sands, a provider of testing and qualification technology for compilers and libraries, will partner with California-based Emprog to establish a representative presence in the U.S.

Automotive

Tesla halted production at its Brandenberg, Germany, gigafactory after an environmental activist group attacked an electricity pylon, reports the Guardian.

Stellantis will invest €5.6 billion (~$6.1B) in South America to support more than 40 new products, decarbonization technologies, and business opportunities.

The amount of data being collected, processed, and stored in vehicles is exploding, and so is the value of that data. That raises questions that are still not fully answered about how that data will be used, by whom, and how it will be secured.

While industry experts expect many benefits of V2X technology, technological and social hurdles to cross. But there is progress.

Infineon released its next-gen silicon carbide (SiC) MOSFET trench technology with 650V and 1,200V options improving stored energies and charges by up to 20%, ideal for power semiconductor applications such as photovoltaics, energy storage, DC EV charging, motor drives, and industrial power supplies.

Hyundai selected Ansys to supply structural simulation solutions for vehicle body system analysis, providing end-to-end, predictively accurate capabilities for virtual performance validation.

ION Mobility used the Siemens Xcelerator portfolio for styling, mechanical engineering, and electric battery pack development for its ION M1-S electric motorbike.

Ethernovia sampled a family of automotive PHY transceivers that scale from 10 Gbps to 1 Gbps over 15 meters of automotive cabling.

The California Public Utilities Commission (CPUC) approved Waymo’s plan to expand its driverless robotaxi services to Los Angeles and other cities near San Francisco, reports Reuters.

By 2027, next-gen battery EVs (BEVs) will on average be cheaper to produce than comparable gas-powered cars, reports Gartner. But the firm noted that average cost of EV accident repair will rise by 30%, and 15% of EV companies founded in the last decade will be acquired or bankrupt.

University of California San Diego (UCSD) researchers developed a cathode material for solid-state lithium-sulfur batteries that is electrically conductive and structurally healable.

ION Storage Systems announced its anodeless and compressionless solid-state batteries (SSBs) achieved 125 cycles with under 5% capacity degradation in performance. ION has been working with the U.S. Department of Defense (DoD) to test its SSB before expanding into markets such as EVs, energy storage, consumer electronics, and aerospace.

Security

Advanced process nodes and higher silicon densities are heightening DRAM’s susceptibility to Rowhammer attacks, as reduced cell spacing significantly decreases the hammer count needed for bit flips. A multi-layered, system-level approach is crucial to DRAM protection.

Researchers at Bar-Ilan University and Rafael Defense Systems proposed an analytical electromagnetic model for IC shielding against hardware attacks.

Keysight acquired the IP of Firmalyzer, whose firmware security analysis technology will be integrated into the Keysight IoT Security Assessment and Automotive Security solutions, providing analysis into what is happening inside the IoT device itself.

Flex Logix joined the Intel Foundry U.S. Military Aerospace Government (USMAG) Alliance, ensuring U.S. defense industrial base and government customers have access to the latest technology, enabling successful designs for mission critical programs.

The EU Council presidency and European Parliament reached a provisional agreement on a Cyber Solidarity Act and an amendment to the Cybersecurity Act (CSA) concerning managed security services.

The EU Agency for Cybersecurity (ENISA) and partners updated the compendium on elections cybersecurity in response to issues such as AI deep fakes, hacktivists-for-hire, the sophistication of threat actors, and the current geopolitical context.

The Cybersecurity and Infrastructure Security Agency (CISA) launched efforts to help secure the open source software ecosystem; updated its Public Safety Communications and Cyber Resiliency Toolkit; and issued other alerts including security advisories for VMware, Apple, and Cisco.

Pervasive Computing and AI

Johns Hopkins University engineers used natural language prompts and ChatGPT4 to produce detailed instructions to build a spiking neural network (SNN) chip. The neuromorphic accelerators could power real-time machine intelligence for next-gen embodied systems like autonomous vehicles and robots.

The global AI hardware market size was estimated at $53.71 billion in 2023, and is expected to reach about $473.53 billion by 2033, at a compound annual growth rate of 24.5%, reports Precedence Research.

National Institute of Standards and Technology (NIST) researchers and partners built compact chips capable of converting light into microwaves, which could improve navigation, communication, and radar systems.

Fig. 1: NIST researchers test a chip for converting light into microwave signals. Pictured is the chip, which is the fluorescent panel that looks like two tiny vinyl records. The gold box to the left of the chip is the semiconductor laser that emits light to the chip. Credit: K. Palubicki/NIST

The Indian government is investing 103 billion rupees ($1.25B) in AI projects, including computing infrastructure and large language models (LLMs).

Infineon is collaborating with Qt Group, bringing Qt’s graphics framework to Infineon’s graphics-enabled TRAVEO T2G cluster MCUs to optimize graphical user interface (GUI) development.

Keysight leveraged fourth-generation AMD EPYC CPUs to develop a new benchmarking methodology to test mobile and 5G private network performance. The method uses realistic traffic generation to uncover a CPU’s true power and scalability while observing bandwidth requirements.

The AI industry is pushing a nuclear power revival, reports NBC, and Amazon bought a nuclear-powered data center in Pennsylvania from Talen Energy for $650 million, according to WNEP.

Bank of America was awarded 644 patents in 2023 for technology including information security, AI, machine learning (ML), online and mobile banking, payments, data analytics, and augmented and virtual reality (AR/VR).

Mistral AI’s large language model, Mistral Large, became available in the Snowflake Data Cloud for customers to securely harness generative AI with their enterprise data.

China’s smartphone unit sales declined 7% year over year in the first six weeks of 2024, with Apple declining 24%, reports Counterpoint.

Shipments of LCD TV panels are expected to reach 55.8 million units in Q1 2024, a 5.3% quarter over quarter increase, reports TrendForce. And an estimated 5.8 billion LED lamps and luminaires are expected to reach the end of their lifespan in 2024, triggering a wave of secondary replacements and boosting total LED lighting demand to 13.4 billion units.

Korea Institute of Science and Technology (KIST) researchers mined high-purity gold from electrical and electronic waste.

The San Diego Supercomputer Center (SDSC) and the University of Utah launched a National Data Platform pilot project, aimed at making access to and use of scientific data open and equitable.

Events

Find upcoming chip industry events here, including:

Event Date Location
ISS Industry Strategy Symposium Europe Mar 6 – 8 Vienna, Austria
GSA International Semiconductor Conference Mar 13 – 14 London
Device Packaging Conference (DPC 2024) Mar 18 – 21 Fountain Hills, AZ
GOMACTech Mar 18 – 21 Charleston, South Carolina
SNUG Silicon Valley Mar 20 – 21 Santa Clara, CA
SEMICON China Mar 20 – 22 Shanghai
OFC: Optical Communications & Networking Mar 24 – 28 Virtual; San Diego, CA
DATE: Design, Automation and Test in Europe Conference Mar 25 – 27 Valencia, Spain
SEMI Therm Mar 25- 28 San Jose, CA
MemCon Mar 26 – 27 Silicon Valley
All Upcoming Events

Upcoming webinars are here.

Further Reading and Newsletters

Read the latest special reports and top stories, or check out the latest newsletters:

Systems and Design
Low Power-High Performance
Test, Measurement and Analytics
Manufacturing, Packaging and Materials
Automotive, Security and Pervasive Computing

The post Chip Industry Week In Review appeared first on Semiconductor Engineering.

Techniques To Identify And Correct Asymmetric Wafer Map Defects Caused By Design And Process Errors

Od: James Kim
22. Únor 2024 v 09:03

Asymmetries in wafer map defects are usually treated as random production hardware defects. For example, asymmetric wafer defects can be caused by particles inadvertently deposited on a wafer during any number of process steps. In this article, I want to share a different mechanism that can cause wafer defects. Namely, that these defects can be structural defects that are caused by a biased deposition or etch process.

It can be difficult for a process engineer to determine the cause of downstream structural defects located at a specific wafer radius, particularly if these defects are located in varying directions or at different locations on the wafer. As a wafer structure is formed, process behavior at that location may vary from other wafer locations based upon the radial direction and specific wafer location. Slight differences in processes at different wafer locations can be exaggerated by the accumulation of other process steps as you move toward that location. In addition, process performance differences (such as variation in equipment performance) can also cause on-wafer structural variability.

In this study, structural defects will be virtually introduced on a wafer to provide an example of how structural defects can be created by differences in wafer location. We will then use our virtual process model to identify an example of a mechanism that can cause these types of asymmetric wafer map defects.

Methods

A 3D process model of a specific metal stack (Cu/TaN/Ta) on a warped wafer was created using SEMulator3D virtual fabrication (figure 1). After the 3D model was generated, electrical analysis of 49 sites on the wafer was completed.

In our model, an anisotropic barrier/liner (TaN/Ta) deposition process was used. Due to wafer tilting, there were TaN/Ta deposition differences seen across the simulated high aspect ratio metal stack. To minimize the number of variables in the model, Cu deposition was assumed to fill in an ideal manner (without voids). Forty-nine (49) corresponding 3D models were created at different locations on the wafer, to reflect differences in tilting due to wafer warping. Next, electrical simulation was completed on these 3D models to monitor metal line resistance at each location. Serpentine metal line patterns were built into the model, to help simulate the projected electrical performance on the warped wafer at different points on the same radius, and across different directions on the wafer (figure 2).

Illustration of an anisotropic liner/barrier metal deposition on a tilted silicon wafer structure caused by wafer warping. In the illustration, the deposition direction is represented by arrows at the top of the image pointed down toward a silicon wafer at the bottom of the image. Forty-nine (49) corresponding 3D models were created at different locations on the wafer, to reflect differences in tilting due to wafer warping. These 49 models are represented in the image by rectangular blocks shown between the deposition direction arrows and the silicon wafer itself.

Fig. 1: Anisotropic liner/barrier metal deposition on a tilted structure caused by wafer warping.

Composite image displaying the resistance extraction simulation and cross section analysis performed in this study. 4 images make up the composite image. Upper left: 3D visualization of serpentine metal line patterns built into the model. Upper right: Top view of TaN/Ta deposition in simulated high aspect ratio metal stack, along with visible Cu deposition (shown in brown and blue colors). Lower left: Cross section view of metal stack. Lower right: Resistance extraction simulation of serpentine metal line patterns, with different colors (blue to red) highlighting areas of lower to higher resistance.

Fig. 2: Resistance extraction simulation and cross section analysis.

Using only incoming structure and process behavior, we can develop a behavioral process model and extend our device performance predictions and behavioral trend analysis outside of our proposed process window range. In the case of complicated processes with more than one mechanism or behavior, we can split processes into several steps and develop models for each individual process step. There will be phenomena or behavior in manufacturing which can’t be fully captured by this type of process modeling, but these models provide useful insight during process window development.

Results

Of the forty-nine 3D models, the models on the far edge of the wafer were heavily tilted by wafer warpage. Interestingly, not all of the models at the same wafer radius exhibited the same behavior. This was due to the metal pattern design. With anisotropic deposition into high aspect ratio trenches, deposition in specific directions was blocked at certain locations in the trenches (depending upon trench depth and tilt angle). This affected both the device structure and electrical behavior at different locations on the wafer.

Since the metal lines were extending across the x-axis, there were minimal differences seen when tilting the wafer across the x-axis in our model. X-axis tilting created only a small difference in thickness of the Ta/TaN relative to the Cu. However, when the wafer was tilted in the y-axis using our model, the high aspect ratio wall blocked Ta/TaN deposition due to the deposition angle. This lowered the volume of Ta/TaN deposition relative to Cu, which decreased the metal resistance and placed the resistance outside of our design specification.

X-axis wafer tilting had little influence on the device structure. The resistance on the far edge of the x-axis did not significantly change and remained in-spec. Y-axis wafer tilting had a more significant influence on the device structure. The resistance on the far edge of the y-axis was outside of our electrical specification (figure 3).

Electrical simulation results shown on a wafer map. Locations on the far edge of the Y-axis exhibit out-of-spec resistance. Resistance varied between 40,430 and 40,438 ohm/SQ across the wafer. In the image, out of spec resistance on the wafer is highlighted in blue (lower resistance within the range) or red (higher resistance within the range).

Fig. 3: Electrical simulation results shown on a wafer map. Locations on the far edge of the Y-axis exhibit out-of-spec resistance.

Conclusion

Even though wafer warpage occurs in a circular manner due to accumulated stress, unexpected structural failures can occur in different radial directions on the wafer due to variations in pattern design and process behavior across the wafer. From this study, we demonstrated that asymmetric structures caused by wafer warping can create top-bottom or left-right wafer performance differences, even though processes have been uniformly applied in a circular distribution across the wafer. Process simulation can be used to better understand structural failures that can cause performance variability at different wafer locations. A better understanding of these structural failure mechanisms can help engineers improve overall wafer yield, by taking corrective action (such as performing line scanning at specific wafer locations) or by adjusting specific process windows to minimize asymmetric wafer defects.

The post Techniques To Identify And Correct Asymmetric Wafer Map Defects Caused By Design And Process Errors appeared first on Semiconductor Engineering.

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  • Why Chiplets Are So Critical In AutomotiveJohn Koon
    Chiplets are gaining renewed attention in the automotive market, where increasing electrification and intense competition are forcing companies to accelerate their design and production schedules. Electrification has lit a fire under some of the biggest and best-known carmakers, which are struggling to remain competitive in the face of very short market windows and constantly changing requirements. Unlike in the past, when carmakers typically ran on five- to seven-year design cycles, the latest
     

Why Chiplets Are So Critical In Automotive

Od: John Koon
20. Únor 2024 v 09:10

Chiplets are gaining renewed attention in the automotive market, where increasing electrification and intense competition are forcing companies to accelerate their design and production schedules.

Electrification has lit a fire under some of the biggest and best-known carmakers, which are struggling to remain competitive in the face of very short market windows and constantly changing requirements. Unlike in the past, when carmakers typically ran on five- to seven-year design cycles, the latest technology in vehicles today may well be considered dated within several years. And if they cannot keep up, there is a whole new crop of startups producing cheap vehicles with the ability to update or change out features as quickly as a software update.

But software has speed, security, and reliability limitations, and being able to customize the hardware is where many automakers are now putting their efforts. This is where chiplets fit in, and the focus now is on how to build enough interoperability across large ecosystems to make this a plug-and-play market. The key factors to enable automotive chiplet interoperability include standardization, interconnect technologies, communication protocols, power and thermal management, security, testing, and ecosystem collaboration.

Similar to non-automotive applications at the board level, many design efforts are focusing on a die-to-die approach, which is driving a number of novel design considerations and tradeoffs. At the chip level, the interconnects between various processors, chips, memory, and I/O are becoming more complex due to increased design performance requirements, spurring a flurry of standards activities. Different interconnect and interface types have been proposed to serve varying purposes, while emerging chiplet technologies for dedicated functions — processors, memories, and I/Os, to name a few — are changing the approach to chip design.

“There is a realization by automotive OEMs that to control their own destiny, they’re going to have to control their own SoCs,” said David Fritz, vice president of virtual and hybrid systems at Siemens EDA. “However, they don’t understand how far along EDA has come since they were in college in 1982. Also, they believe they need to go to the latest process node, where a mask set is going to cost $100 million. They can’t afford that. They also don’t have access to talent because the talent pool is fairly small. With all that together comes the realization by the OEMs that to control their destiny, they need a technology that’s developed by others, but which can be combined however needed to have a unique differentiated product they are confident is future-proof for at least a few model years. Then it becomes economically viable. The only thing that fits the bill is chiplets.”

Chiplets can be optimized for specific functions, which can help automakers meet reliability, safety, security requirements with technology that has been proven across multiple vehicle designs. In addition, they can shorten time to market and ultimately reduce the cost of different features and functions.

Demand for chips has been on the rise for the past decade. According to Allied Market Research, global automotive chip demand will grow from $49.8 billion in 2021 to $121.3 billion by 2031. That growth will attract even more automotive chip innovation and investment, and chiplets are expected to be a big beneficiary.

But the marketplace for chiplets will take time to mature, and it will likely roll out in phases.  Initially, a vendor will provide different flavors of proprietary dies. Then, partners will work together to supply chiplets to support each other, as has already happened with some vendors. The final stage will be universally interoperable chiplets, as supported by UCIe or some other interconnect scheme.

Getting to the final stage will be the hardest, and it will require significant changes. To ensure interoperability, large enough portions of the automotive ecosystem and supply chain must come together, including hardware and software developers, foundries, OSATs, and material and equipment suppliers.

Momentum is building
On the plus side, not all of this is starting from scratch. At the board level, modules and sub-systems always have used onboard chip-to-chip interfaces, and they will continue to do so. Various chip and IP providers, including Cadence, Diode, Microchip, NXP, Renesas, Rambus, Infineon, Arm, and Synopsys, provide off-the-shelf interface chips or IP to create the interface silicon.

The Universal Chiplet Interconnect Express (UCIe) Consortium is the driving force behind the die-to-die, open interconnect standard. The group released its latest UCIe 1.1 specification in August 2023. Board members include Alibaba, AMD, Arm, ASE, Google Cloud, Intel, Meta, Microsoft, NVIDIA, Qualcomm, Samsung, and others. Industry partners are showing widespread support. AIB and Bunch of Wires (BoW) also have been proposed. In addition, Arm just released its own Chiplet System Architecture, along with an updated AMBA spec to standardize protocols for chiplets.

“Chiplets are already here, driven by necessity,” said Arif Khan, senior product marketing group director for design IP at Cadence. “The growing processor and SoC sizes are hitting the reticle limit and the diseconomies of scale. Incremental gains from process technology advances are lower than rising cost per transistor and design. The advances in packaging technology (2.5D/3D) and interface standardization at a die-to-die level, such as UCIe, will facilitate chiplet development.”

Nearly all of the chiplets used today are developed in-house by big chipmakers such as Intel, AMD, and Marvell, because they can tightly control the characteristics and behavior of those chiplets. But there is work underway at every level to open this market to more players. When that happens, smaller companies can begin capitalizing on what the high-profile trailblazers have accomplished so far, and innovating around those developments.

“Many of us believe the dream of having an off-the-shelf, interoperable chiplet portfolio will likely take years before becoming a reality,” said Guillaume Boillet, senior director strategic marketing at Arteris, adding that interoperability will emerge from groups of partners who are addressing the risk of incomplete specifications.

This also is raising the attractiveness of FPGAs and eFPGAs, which can provide a level of customization and updates for hardware in the field. “Chiplets are a real thing,” said Geoff Tate, CEO of Flex Logix. “Right now, a company building two or more chiplets can operate much more economically than a company building near-reticle-size die with almost no yield. Chiplet standardization still appears to be far away. Even UCIe is not a fixed standard yet. Not all agree on UCIe, bare die testing, and who owns the problem when the integrated package doesn’t work, etc. We do have some customers who use or are evaluating eFPGA for interfaces where standards are in flux like UCIe. They can implement silicon now and use the eFPGA to conform to standards changes later.”

There are other efforts supporting chiplets, as well, although for somewhat different reasons — notably, the rising cost of device scaling and the need to incorporate more features into chips, which are reticle-constrained at the most advanced nodes. But those efforts also pave the way for chiplets in automotive, and there is strong industry backing to make this all work. For example, under the sponsorship of SEMI, ASME, and three IEEE Societies, the new Heterogeneous Integration Roadmap (HIR) looks at various microelectronics design, materials, and packaging issues to come up with a roadmap for the semiconductor industry. Their current focus includes 2.5D, 3D-ICs, wafer-level packaging, integrated photonics, MEMS and sensors, and system-in-package (SiP), aerospace, automotive, and more.

At the recent Heterogeneous Integration Global Summit 2023, representatives from AMD, Applied Materials, ASE, Lam Research, MediaTek, Micron, Onto Innovation, TSMC, and others demonstrated strong support for chiplets. Another group that supports chiplets is the Chiplet Design Exchange (CDX) working group , which is part of the Open Domain Specific Architecture (ODSA) and the Open Compute Project Foundation (OCP). The Chiplet Design Exchange (CDX) charter focuses on the various characteristics of chiplet and chiplet integration, including electrical, mechanical, and thermal design exchange standards of the 2.5D stacked, and 3D Integrated Circuits (3D-ICs). Its representatives include Ansys, Applied Materials, Arm, Ayar Labs, Broadcom, Cadence, Intel, Macom, Marvell, Microsemi, NXP, Siemens EDA, Synopsys, and others.

“The things that automotive companies want in terms of what each chiplet does in terms of functionality is still in an upheaval mode,” Siemens’ Fritz noted. “One extreme has these problems, the other extreme has those problems. This is the sweet spot. This is what’s needed. And these are the types of companies that can go off and do that sort of work, and then you could put them together. Then this interoperability thing is not a big deal. The OEM can make it too complex by saying, ‘I have to handle that whole spectrum of possibilities.’ The alternative is that they could say, ‘It’s just like a high speed PCIe. If I want to communicate from one to the other, I already know how to do that. I’ve got drivers that are running my operating system. That would solve an awful lot of problems, and that’s where I believe it’s going to end up.”

One path to universal chiplet development?

Moving forward, chiplets are a focal point for both the automotive and chip industries, and that will involve everything from chiplet IP to memory interconnects and customization options and limitations.

For example, Renesas Electronics announced in November 2023 plans for its next-generation SoCs and MCUs. The company is targeting all major applications across the automotive digital domain, including advance information about its fifth-generation R-Car SoC for high-performance applications with advanced in-package chiplet integration technology, which is meant to provide automotive engineers greater flexibility to customize their designs.

Renesas noted that if more AI performance is required in Advanced Driver Assistance Systems (ADAS), engineers will have the capability to integrate AI accelerators into a single chip. The company said this roadmap comes after years of collaboration and discussions with Tier 1 and OEM customers, which have been clamoring for a way to accelerate development without compromising quality, including designing and verifying the software even before the hardware is available.

“Due to the ever increasing needs to increase compute on demand, and the increasing need for higher levels of autonomy in the cars of tomorrow, we see challenges in monolithic solutions scaling and providing the performance needs of the market in the upcoming years,” said Vasanth Waran, senior director for SoC Business & Strategies at Renesas. “Chiplets allows for the compute solutions to scale above and beyond the needs of the market.”

Renesas announced plans to create a chiplet-based product family specifically targeted at the automotive market starting in 2025.

Standard interfaces allow for SoC customization
It is not entirely clear how much overlap there will be between standard processors, which is where most chiplets are used today, and chiplets developed for automotive applications. But the underlying technologies and developments certainly will build off each other as this technology shifts into new markets.

“Whether it is an AI accelerator or ADAS automotive application, customers need standard interface IP blocks,” noted David Ridgeway, senior product manager, IP accelerated solutions group at Synopsys. “It is important to provide fully verified IP subsystems around their IP customization requirements to support the subsystem components used in the customers’ SoCs. When I say customization, you might not realize how customizable IP has become over the course of the last 10 to 20 years, on the PHY side as well as the controller side. For example, PCI Express has gone from PCIe Gen 3 to Gen 4 to Gen 5 and now Gen 6. The controller can be configured to support multiple bifurcation modes of smaller link widths, including one x16, two x8, or four x4. Our subsystem IP team works with customers to ensure all the customization requirements are met. For AI applications, signal and power integrity is extremely important to meet their performance requirements. Almost all our customers are seeking to push the envelope to achieve the highest memory bandwidth speeds possible so that their TPU can process many more transactions per second. Whenever the applications are cloud computing or artificial intelligence, customers want the fastest response rate possible.”

Fig 1: IP blocks including processor, digital, PHY, and verification help developers implement the entire SoC. Source: Synopsys

Fig 1: IP blocks including processor, digital, PHY, and verification help developers implement the entire SoC. Source: Synopsys

Optimizing PPA serves the ultimate goal of increasing efficiency, and this makes chiplets particularly attractive in automotive applications. When UCIe matures, it is expected to improve overall performance exponentially. For example, UCIe can deliver a shoreline bandwidth of 28 to 224 GB/s/mm in a standard package, and 165 to 1317 GB/s/mm in an advanced package. This represents a performance improvement of 20- to 100-fold. Bringing latency down from 20ns to 2ns represents a 10-fold improvement. Around 10 times greater power efficiency, at 0.5 pJ/b (standard package) and 0.25 pJ/b (advanced package), is another plus. The key is shortening the interface distance whenever possible.

To optimize chiplet designs, the UCIe Consortium provides some suggestions:

  • Careful planning consideration of architectural cut-lines (i.e. chiplet boundaries), optimizing for power, latency, silicon area, and IP reuse. For example, customizing one chiplet that needs a leading-edge process node while re-using other chiplets on older nodes may impact cost and time.
  • Thermal and mechanical packaging constraints need to be planned out for package thermal envelopes, hot spots, chiplet placements and I/O routing and breakouts.
  • Process nodes need to be carefully selected, particularly in the context of the associated power delivery scheme.
  • Test strategy for chiplets and packaged/assembled parts need to be developed up front to ensure silicon issues are caught at the chiplet-level testing phase rather than after they are assembled into a package.

Conclusion
The idea of standardizing die-to-die interfaces is catching on quickly but the path to get there will take time, effort, and a lot of collaboration among companies that rarely talk with each other. Building a vehicle takes one determine carmaker. Building a vehicle with chiplets requires an entire ecosystem that includes the developers, foundries, OSATs, and material and equipment suppliers to work together.

Automotive OEMs are experts at putting systems together and at finding innovative ways to cut costs. But it remains to seen how quickly and effectively they can build and leverage an ecosystem of interoperable chiplets to shrink design cycles, improve customization, and adapt to a world in which the leading edge technology may be outdated by the time it is fully designed, tested, and available to consumers.

— Ann Mutschler contributed to this report.

Related Reading
Automotive Relationships Shifting With Chiplets
As the automotive ecosystem balances the best approaches for designing in increasingly advanced features, how companies interact is still evolving.

The post Why Chiplets Are So Critical In Automotive appeared first on Semiconductor Engineering.

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