Abstract:
This article gives a detailed insight on a machine learning procedure to infer quasistatic quantities of electrostatic discharge (ESD) protection structures from their in...Show MoreMetadata
Abstract:
This article gives a detailed insight on a machine learning procedure to infer quasistatic quantities of electrostatic discharge (ESD) protection structures from their instance parameters in a netlist. It resorts to a dataset of transmission line pulse (TLP) I-V curves that have been obtained from numerous transient electrical simulations. The tuning of machine learning algorithms and the quantification of their generalized prediction performances on out-of-sample data are performed by means of nested cross-validation. Resulting fitted analytical models are encompassed in a tool called ESD IP Explorer in charge of providing a systematic and scalable ESD verification methodology. This tool, which has been specifically implemented to cover the entire design flow and to comply with custom circuit architectures, is described in a former article.
Published in: IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems ( Volume: 39, Issue: 10, October 2020)
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- IEEE Keywords
- Index Terms
- Electrostatic Discharge ,
- Model Analysis ,
- Machine Learning ,
- Predictive Performance ,
- Transient Simulation ,
- Electric Simulation ,
- Nested Cross-validation ,
- Training Data ,
- Accuracy Of Model ,
- Explanatory Variables ,
- Variety Of Features ,
- Alternative Models ,
- Least Squares Regression ,
- Entire Dataset ,
- Hyperparameter Tuning ,
- Target Variable ,
- Directed Graph ,
- Model Inference ,
- Ridge Regression ,
- Outer Loop ,
- Quasi-static Model ,
- Validation Subset ,
- Technology Node ,
- Estimation Of Composition ,
- Human Body Model ,
- Classical Regression ,
- Test Subset ,
- Training Dataset ,
- Device Parameters ,
- Generalization Performance
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Electrostatic Discharge ,
- Model Analysis ,
- Machine Learning ,
- Predictive Performance ,
- Transient Simulation ,
- Electric Simulation ,
- Nested Cross-validation ,
- Training Data ,
- Accuracy Of Model ,
- Explanatory Variables ,
- Variety Of Features ,
- Alternative Models ,
- Least Squares Regression ,
- Entire Dataset ,
- Hyperparameter Tuning ,
- Target Variable ,
- Directed Graph ,
- Model Inference ,
- Ridge Regression ,
- Outer Loop ,
- Quasi-static Model ,
- Validation Subset ,
- Technology Node ,
- Estimation Of Composition ,
- Human Body Model ,
- Classical Regression ,
- Test Subset ,
- Training Dataset ,
- Device Parameters ,
- Generalization Performance
- Author Keywords