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Jeong, Changwook
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Restructuring TCAD System: Teaching Traditional TCAD New Tricks

Author(s)
Myung, SanghoonJang, WonikJin, SeonghoonChoe, Jae MyungJeong, ChangwookKim, Dae Sin
Issued Date
2021-12-11
DOI
10.1109/IEDM19574.2021.9720616
URI
https://scholarworks.unist.ac.kr/handle/201301/76436
Citation
2021 IEEE International Electron Devices Meeting, pp.18.2.1 - 18.2.4
Abstract
Traditional TCAD simulation has succeeded in predicting and optimizing the device performance; however, it still faces a massive challenge - a high computational cost. There have been many attempts to replace TCAD with deep learning, but it has not yet been completely replaced. This paper presents a novel algorithm restructuring the traditional TCAD system. The proposed algorithm predicts three-dimensional (3-D) TCAD simulation in real-time while capturing a variance, enables deep learning and TCAD to complement each other, and fully resolves convergence errors.
Publisher
Institute of Electrical and Electronics Engineers Inc.

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