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The Next Generation of DFM Tools: Die-Level Parametric Variation Monitoring

By Ken Harris
Senior Technical Writer and Illustrator
Ridgetop Group


Designers and manufacturers using sub-90 nm process geometries face adapting to many challenges encountered in the nanoscale crossover. As sizes shrink, statistical variations grow wider and multivariate relationships expand in number. The logic of the situation is both simple and remorseless. With each process node, geometries shrink, new materials are added, masking steps increase and become more intricate, and design rules ever trickier. To compensate for the sub-wavelength lithography bottleneck, design is more complex. As integrated circuit (IC) feature sizes reduce, manufacturing processes become more complex. Process complexity creates new defects while smaller features result in circuits more susceptible to electrical faults. Defect detection must become more sensitive to keep up with each process generation. In the crush of the downward spiral, all of the slack in the system is eliminated.

So, just as the semiconductor industry evolves to find the right balance, DFM has seen test, reliability, diagnostics, random yield, and systematic yield incorporated under the DFM umbrella. Parametric variation monitoring for yield optimization is the latest generation of DFM tool and it is a greatly needed step in the right direction. Properly designed DFM tools and libraries can help enable "process-aware" design methods maintain high production yields.

Designing For Yield (DFY)

Optimizing yield is a weathered cornerstone of the semiconductor industry. The crossover into nanoscale fabrication has made mastering yield even more intricate and complicated than ever. One of those complications is a shift from process variation to parametric variation as the dominant source of yield-limiting defects. This makes the emergence of electrically-based DFM (E-DFM) tools critical for addressing parametric yield failures.

In its 2007 Technology Roadmap, the ITRS (International Technology Roadmap for Semiconductors) made parametric variation a top challenge across the industry stating, "there is a real business need to be able to isolate electrically to at least the failing transistor or interconnect in the future, or suffer the economic consequences of reduced yield improvement..."

Parametric Variation & Yield Loss

Parametric-related yield losses are caused by variations in electrical properties. This is in contrast to process-related yield losses, which are caused by variations in the physical properties such as doping profiles or oxide thicknesses. So, DFM tools can be categorized as physically-based or electrically-based. Designers want a realistic electrical measurement for critical parameters such as threshold voltage matching that will drive circuit designs...not process-driven measurements commonly used in older, scribe line approaches.

In the nanoscale CMOS processes currently being developed and refined, parametric variation is associated with systematic and random intra-die effects. The push into advanced technology nodes has produced an unintended side effect. Placing more features into smaller places creates a crowding issue with a dramatically negative impact on yield and performance. At 90 nm and below, systematic defects increase steadily at a faster rate than random defects as the source of yield loss by technology node.

To illustrate this, within the category of systematic yield defects, there are two major subcategories: 1) lithography / new materials-based and 2) design-based. At the 130 nm node, systematic defects are roughly an equal split between the two subcategories. A dramatic increase is obvious at the 90 nm node where the ratio is approximately 2.5 : 1 for design-based versus lithography / new materials yield defects.

The slope for design-based yield loss is reminiscent of a bad airplane movie: at 350 nm businessmen are complaining about service, at 250 nm the babies start crying, at 180 nm cue the screaming, at 130 nm the crew start disappearing, and at 90 nm the pilots have bailed leaving the passengers in hysterics and the businessmen are still wondering where their drinks went. Welcome to business-class in semiconductor manufacturing. The flashing sign at 90 nm indicates a bumpy ride from here until Moore's Law cancels everyone's frequent flier miles.

Figure 1: Defect Categories by Yield and Process Nodes

There is good news - systematic yield loss can be mitigated, particularly the design-related part that accounts for an estimated loss of $30B/year. So now, the clarion call by ITRS for rapid development in all areas of parametric monitoring, testing, yield loss / learning, and DFM tools becomes apparent. NanoDFM or reducing yield loss and optimizing performance through die-level parametric monitoring tools is a solid strategy in the nanoscale world.

The Two Sides Of DFM: Physical And Parametric

Process-based (physical) DFM technology is concerned with identifying and correcting particle defects or process variations that can lead to functional failures like shorts and opens. Electrically-based DFM is concerned with parameters that fall out of specification or adversely impact functional performance. The great advantage to E-DFM (electrical DFM) is the directness of evaluating the function and performance of an electrical device through electrical measurements. In comparison, physical DFM can be indirect to the point of being circuitous, using, for example, a visual observation to estimate the electrical functionality of a component or element. Physical DFM variables can easily reach into the hundreds and thousands, accounting for the surge in test time and data volume as fabrication processes push beyond 90 nm into 65 nm, 45 nm, and further. On the other hand, variables or parameters for electrical DFM are so focused they literally be counted on one hand.

Parametric Variables & Die-Level Monitoring

There are four core electrical parameters:

  • Threshold Voltage, VTH
  • Resistance, R
  • Capacitance, C
  • Digital transition on-current, ION

While this list could include power, leakage current, and other variables, it is these four parameters that are the most critical values needed to accurately predict yield. These core parameters are from on-chip test structures designed with the capabilities required to validate transistor and interconnect modeling, Process Design Kit (PDK) values, predicted versus actual performance, and substantiate design closure with a high degree of confidence.

Die-Level Monitoring & PDKChek®

The break-through in practical parametric yield improvement lies in the use of specialized test structures located in-situ. While simple in concept, the execution was only made possible using patented nanoDFM™ technology pioneered and patented by Ridgetop Group, Inc. Designing test structures for evaluating parametric yield and, most importantly, analyzing critical patterns and parameters requires extraordinary attention to details:

  • What are the test parameters and patterns?
  • How are the measurements conducted?
  • What test equipment?
  • How to minimize manual interference?
  • How to design individual tests that produce clear, unambiguous, accurate results and trends?

Beyond the test structures for monitoring, testing, and reporting, a powerful analytical engine is needed as well as a suite of other tools for assisting in accelerating the maturation of a process / device through yield and performance optimization.

PDKChek® technology was created using an engineering design philosophy that is customer-driven. Test structures and internal elements are modularized for maximum customization. At the finest granularity, each die has an instantiation of PDKChek®. The test structure is a self-contained IP with internal test devices designed for producing the monitored electrical values. These test devices are the target transistors, resistors, and capacitors; they are exact matches for the devices in the host. Each PDKChek® instance is created with the host circuitry so every fabrication experience is identical for monitor and host. The use of an interface like JTAG (IEEE-1149.1) makes data collection possible at every stage of die handling and beyond. Since PDKChek® can be turned on and off, failure analysis and operational data can be extracted to support post-manufacturing activities. Wafer probing is difficult at sub-90 nm. To prevent probe damage, Ridgetop's patented buffered socket approach protects transistors from damage during the easy and accurate measurement extraction process.

PDKChek® technology is designed for verification of the PDKs supplied by foundries. The interplay of foundries, fabless designers, and pure-play manufacturers has created communication issues when clear channels are needed more than ever. Since foundry PDKs do not reliably model all parameters fabless designers need, Ridgetop developed the technology needed determine key parameters like transistor matching.

Figure 2: PDKChek® Feedback Diagram

Ridgetop Group's PDKChek® allows designers to compare the performance between different foundries using the same independent die-level monitor. The die-level process monitors provide critical mismatch performance comparison by fabless IC firms. PDKChek® provides the accurate modeling data needed to realize the full potential of advanced semiconductor processes. This improves model predictability, which reduces the need for chip respins.

Transistor Matching

Transistor matching is an example of a yield-limiting parametric variation that PDKChek® monitors and detects. Many circuit applications are based on component pairs that are assumed to be identical. These matched pairs are very common. For example, transistor pairs are used in Digital-to-Analog Converter (DAC), Analog-to-Digital Converter (ADC), Phased-Locked Loop (PLL), amplifier, operational amplifier, comparator, and voltage reference circuits. Transistor mismatches represent the extreme technical challenge of defect isolation taken to the individual transistor-level. The technical competency requirement is so great, ITRS singled out single transistor defect identification as a challenge in its 2007 Technology Roadmap. But the challenge is warranted since transistor mismatching results in yield loss, performance/precision reduction, and redesign time/resources.

NanoDFM™, Sentinel PHMPro™, And Other Ridgetop Innovations

Ridgetop Group's solution, PDKChek®, is part of the nanoDFM tool suite and works with Sentinel PHMPro, a prognostic analysis engine. The nanoDFM suite includes AdaptChek(Adaptive Biasing IP core), PDKChek® (Foundry PDK verification for fabless designers), QualChek (Process calibration for foundries), TestChek (IC test time reduction), and YieldChek (Process-aware DFM monitor). Each tool shares the unique and patented nanoDFM technology designed to monitor parametric variations. On-chip test structures replicate multiple transistor types and capture threshold voltage, polysheet resistance, capacitance, and ION to address parametric variations from design and manufacturing interactions and provide the precise, real-time data required for accurate physical modeling by TCAD. With the introduction of the nanoDFM tools such as PDKChek®, designers have the ability to analyze and address process variations at the design stage without changing their existing design flow.

Ridgetop Group is a privately-held firm founded in 2000 to provide advanced tools and IP for critical systems. With an excellence in engineering innovation motto, Ridgetop has gained an impressive customer list, including NASA, Honeywell, DARPA, NAVAIR, Raytheon Missile Systems, Daimler AG, ATK/Mission Research, General Dynamics, US Department of Energy, Air Force Research Labs, and other government and commercial firms in North America, Europe, and Asia.

Click here to explore Ridgetop-Group IP

About the Author

Ken Harris is the senior technical writer at Ridgetop Group. An expert in usability and cross-cultural communication, he has served as plenary speaker and symposium chair for advanced topics in technical communication and information design. Over a 25-year career, he has become an award-winning writer, designer, and illustrator with awards ranging from academic contests to juried national and international competitions. He received a BA in English from the University of New Mexico, graduating cum laude and with departmental honors. He has taught graduate-level technical writing and graphic design at Georgia Tech and Southern Polytechnic State University and is a senior fellow in the Society for Technical Communication.


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