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Contributing Authors:

Application of Inline Defect Part Average Testing (I-PAT™) to Identify Potential Latent Reliability Defect Escapes: Feasibility Study Results at NXP. Contributing Authors: Onder Anilturk, Joyce Witowski, Nikolas Sumikawa, Mommay Ng, et al , NXP Semiconductors N.V.

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  1. Application of Inline Defect Part Average Testing (I-PAT™) to Identify Potential Latent Reliability Defect Escapes: Feasibility Study Results at NXP Contributing Authors: Onder Anilturk, Joyce Witowski, Nikolas Sumikawa, Mommay Ng, et al, NXP Semiconductors N.V. John C. Robinson, Mike von den Hoff, David Price, Jay Rathert, et al, KLA Corporation Dan Sebban, Stas Shavlev, Randall Smith, William Usry, et al, Optimal Plus Corporation

  2. Agenda • Problem Statement & Proposed Solution • NXP Feasibility Study • Conclusions

  3. Company Overview Total Quality Vision When our customers think of NXP, we want them to think Total Quality First time right development, designs and qualification Deliver zero defects to our customers Provide flawless customer support enabled by Quality Mindset & Culture Total Quality is our foundation enabling a Smart, Safe and Secure World

  4. Company Overview Lifecycle analytics for reliable electronics Accelerating Reliability for Automotive ICs • Actionable analytics solutions for smart manufacturing • Serving the leading brands in the automotive, semiconductor and electronics supply chains • Worldwide leader in Quality and Reliability solutions for: • Semiconductor Manufacturing • Packaging • PCB and Flat Panel

  5. The Business Problem $600 DPPM <.1 DPPM Source: Gartner DPPM – Defective Parts Per Million Increasing semiconductor content per vehicle Higher expectations from customers Tightening requirements

  6. The Technical Problem: Reliability Defects Look here first • Latent reliability defects (LRDs) which become activated after test • Typically partial bridges / opens • Statistically more prevalent in highly defective die • Killer defects in test coverage gaps No Impact Defect Potential Early Life Failure Defect Likely Yield Failure Defect

  7. Challenge of Existing Methods Reliability Defect Escapes Customer Field Activation and Failure       Electrical wafer sort E-Test Final Test Burn-in Board Part Fab Zero Defect: How to improve when you’re already doing each individual part extremely well? • Fab: Sub-samples a small percentage of product to control the process and stop excursions • Electrical Test: Go/No-Go decision ambiguity • Latent defects aren’t easily detectable at test. • Untestable areas  • Coverage versus time-based costs. • PAT: Parametric outlier analysis helps tremendously, but escapes might still happen.

  8. Breaking Down Silos: Holistic View Can we do more with the data we already have? Process Front-end (FAB) Limited data sharing between silos Defectivity & Metrology Electrical Wafer Sort Final Test + PCBs, Systems FAB TEST Back-end (Test) Process yield Time-to-Mkt Quality Reliability Soft Bin, Parametrics Soft Bin, Parametrics Most production analytics (outlier detection algorithms) use only electrical wafer sort data

  9. Example: Merging Inline Defect Data with Electrical Wafer Sort (EWS) provides clues for potential reliability failures Which die are most likely to fail?

  10. Inline Part Average Testing (I-PAT) I-PAT is a method for die-level screening based on inline defect results which uses advanced correlation engines to weight defectivity, create a die-level defectivity score, and identify high reliability risk die using statistical outlier detection. Inspection Layer 1 Stacked map Inspection Layer 2 Inspection Layer 3 Inspection Layer 4 . . . Inspection Layer 8 Is there a statistical difference in chip reliability between Chip A and B?

  11. Optimal+ Outlier Detection Solution - Typical PAT Rule • The solution allows to screen potentially marginal parts by processing a sequence of PAT algorithms on test data • The PAT rule can be defined (and optimized) either using supervised or unsupervised methodologies • Simulations on historical data are usually performed before the PAT rule is deployed for use in volume production Typical PAT Rule Example

  12. Agenda • Problem Statement & Proposed Solution • NXP Feasibility Study • Conclusions

  13. NXP Feasibility Study Overview Stacked wafer map NVM stack etch 1 NVM stack etch 2 Post salicide Post contact barrier Post metal 1 CMP Post metal 2 CMP Post metal 3 CMP Post last metal CMP • Historic analysis: • Defective die that would be screened out at inspection or subsequent tests are used in this study for correlation purposes • Sample population represents 600 wafers (~250k die) • 8 Inline defect inspections per wafer (4 FEOL, 4 BEOL) on high sensitivity broadband inspection system • Electrical Wafer Sort, Final Test and Burn-In data used for correlation

  14. Correlation of Inline Defect Outliers with EWS Observation: I-PAT defect outlier die bins correlate with EWS fallout die Note: I-PAT results from blind training using defect attribute only: no EWS feedback used to identify I-PAT outlier die, independent validations. Implication: I-PAT outlier die that somehow pass EWS should be more closely analyzed (e.g., ink-off, burn-in testing, more e-test programs) Correlation of Defect-Based Die Outliers (I-PAT) with Electrical Wafer Sort (EWS) EWS Fallout Rate I-PAT Distribution High I-PAT Scoring Die are more likely to fail EWS due to defects I-PAT Die Bins Less defective die More defective die

  15. Defectivity Index (I-PAT) correlation to EWS • I-PAT was correlated to both Wafer Sort and Final Test yield • Drilldown to soft bin and parametric test level can easily be achieved for higher level of granularity in the correlation between defectivity and electrical test performance Correlation to Parametric Test performance Correlation to specific Soft Bin Fallout Correlation to EWS Yield Average EWS yield Total die count % bin I-PAT bin (ascending) I-PAT bin (ascending) I-PAT bin (ascending)

  16. Defectivity Index (I-PAT) correlation to EWS I-PAT can identify individual statistical outlier die, and drill down to root cause Better screening using both test and defectivity data, e.g. • Applying I-PAT defect outlier recognition • Using G-PAT to detect clusters using combination of test and I-PAT data • Bin Map post enhanced Outlier Detection • Bin Map post standard Outlier Detection • Bin Map Smart I-PAT Map HB998I-PAT Static PAT HB997 G-PAT outliers (test and defectivity) HB99G-PAT (test only)

  17. Case Study: BEOL Defects Cross sectional representation of Cu void defect Top Down Cu Defect Examples on die which failed EWS & FT Fuse Cu defect at backend of line (BEOL) metal layers is a potential source of reliability escapes I-PAT has the potential for early identification of Cu defects, closer to the root cause, and the opportunity to optimize test and enhance screening methodologies.

  18. Correlation of Inline Defect Outliers with Burn-In Correlation of Defect-Based Results (I-PAT) with Post-Burn-in Electrical Test Observation: I-PAT defect outlier die bins correlate with Burn-in fallout die. Implication: I-PAT outlier die should be more closely analyzed (e.g., P-PAT, G-PAT, etc.). I-PAT plus additional manufacturing and test are needed to improve prediction  lower false positive (escapes) and lower false negative (unnecessary yield loss) Burn-in Fallout Rate High I-PAT Scoring Die are more likely to fail burn-in due to activated latent defects Burn-In Cumulative Failure Map I-PAT Die Bins Less defective die More defective die

  19. Burn-In Prediction using Reliability Index (RI) • Burn-In was added in Manufacturing flow as an additional stress test • The motivation is to reduce the cost of Burn-In without impacting Product Reliability • Using Reliability Index, we can define the parts which are more likely to fail during Burn-In and adapt the burn-in testing accordingly per each unit. Current flow Defectivity / Metrology Test Burn-in Ship to customer Pass Pass Pass Pass Proposed flow Response data Input data Defectivity / Metrology Test ML model for RI Burn-in Ship to customer Pass Skip

  20. I-PAT Model Prediction • “Ground Truth” Indicators for Reliability Failure: • SEM Defect Images of known failure modes • Electrical Wafer Sort • Final Test • Burn-in • Field returns • Hit-back analysis Die-Level Reliability Metric Defect Weighting Correlation Engine Statistical Filter Die Aggregator • Inspection Defect Attributes • # of Defects per die • Defect type (rough bin) • Defect size, shape, polarity, etc. • Proximity to critical area • In Die Region (e.g., test coverage gaps) • Defect source analysis • Modeled yield impact • Spatial Signature Analysis • Stacked layers & stacked die position

  21. Burn-In failures Prediction – Machine Learning (ML) Flow I-PAT Feature reduction (Big data Analytics) Supervised multivariate feature selection ML modeling Model validation EWS xxx features xxxx features xxx features xx features Model Engineering xxx features • Thousands of features are used to build a Machine Learning model. • The effectiveness of the model depends on the quality of the data and the domain knowledge • Note that this is supervised Machine Learning, i.e. historical burn-in data performance is used to create and validate the model.

  22. Engineering Features for ML Model • In addition to existing model input parameters (or features) domain expertise can be applied to increase the amount of features and improve the predictive capabilities of the model • Parametric / Test Engineering Features • Wafer and lot level statistics • Multivariate parameters (such as principal components) • Geographical data such as radius and wafer zones • … • Defectivity Engineering Features • I-PAT Model (FE, BE) • Additional defectivity data (such as defect attributes, wafer zones, in-die regions) • Z-axis I-PAT aggregation • …

  23. Next Steps: Adaptive Burn-in* • ML model shows opportunity of reducing Burn-in by 20% with 0 impact to DPPM • This allows to define the threshold for the Manufacturing Reliability-Index RI threshold Reliability index *non-NXP example illustration

  24. Next steps: Drilldown to Important Features* • Despite the model not being fully ‘transparent’, it is possible to understand what the most important features are which predict the burn-in outcome • In this example, the top 30 predictive features cover ~ 95% of overall predictive power of the ML model *non-NXP example illustration

  25. Potential Implementation Use Cases Use I-PAT data to enhance standard Outlier Detection (PAT) rule, that is today based solely on test data Build and implement ML model based on defectivity (I-PAT) and test data to predict burn-in failures Feedback information to continuously improve in-line defectivity inspection recipes, and outlier detection rules

  26. Agenda • Problem Statement & Proposed Solution • NXP Feasibility study • Conclusions

  27. Conclusions • NXP is striving to raise the bar to identify and eliminate ppb (parts per billion) levels of failure and is continually looking for opportunities to drive quality and achieve zero defects. Participation in this feasibility study is one example of that commitment to quality. • I-PAT has the potential to bring additional data to identify and screen out outlier die containing possible latent reliability defects. • Combination of I-PAT, test data and advanced analytics can be used to identify potential latent reliability defects while reducing overkill and burn-in costs • Continuous improvement (defects classification, I-PAT algorithm, ML model …) is needed to lower cost of screening, and improve product outgoing reliability performance • Future studies include investigation into feasibility of a production implementation of I-PAT

  28. Thank you

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