Machine Learning Approach for Prediction of Point Defect Effect in FinFET
Citations

WEB OF SCIENCE

22
Citations

SCOPUS

24

초록

As Fin Field Effect Transistor (FinFET) scales aggressively, even a single point defect becomes a source of performance variability. The point defect is inevitably introduced not only by process damage such as epitaxial growth and ion implantation but also by cosmic rays. Technology computer-aided design (TCAD) is able to simulate the characteristics of the device with the defect. In this work, a machine learning algorithm is tested if it can reproduce the TCAD results. The impact of point defect in bulk FinFET is used as test vehicle to validate the machine-learning algorithm. TCAD is used first to generate a massive number of current-voltage characteristics dataset. The TCAD dataset is then exclusively divided into groups for machine learning training, validation and test. The trained model provides high accuracy test results within 1 % error, showing the possibility to expedite failure analysis cycle via machine learning.

키워드

Machine learningFinFETTCADsimulationpoint defectVARIABILITY
제목
Machine Learning Approach for Prediction of Point Defect Effect in FinFET
저자
Kim, JungsikKim, Sun JinHan, Jin-WooMeyyappan, M.
DOI
10.1109/TDMR.2021.3069720
발행일
2021-06
유형
Article
저널명
IEEE Transactions on Device and Materials Reliability
21
2
페이지
252 ~ 257