posted on 2023-03-08, 12:22authored byHyoungcheol Kwon, Hyunsuk Huh, Hwiwon Seo, Songhee Han, Imhee Won, Jiwoong Sue, Dongyean Oh, Felipe IzaFelipe Iza, Seungchul Lee, Sung Kye Park, Seonyong Cha
Cost-effective vertical etching of plug holes and word lines is crucial in enhancing 3D NAND device manufacturability. Even though multiscale technology computer-aided design (TCAD) methodology is suitable for effectively predicting etching processes and optimizing recipes, it is highly time-consuming. This article demonstrates that our deep learning platform called TCAD-augmented Generative Adversarial Network can reduce the computational load by 2 600 000 times. In addition, because well-calibrated TCAD data based on physical and chemical mutual reactions are used to train the platform, the etching profile can be predicted with the same accuracy as TCAD-only even when the actual experimental data are scarce. This platform opens up new applications, such as hot spot detection and mask layout optimization, in a chip-level area of 3D NAND fabrication.
Funding
SK Hynix Inc. and the Institute of Civil-Military Technology Cooperation funded by the Defense Acquisition Program Administration and Ministry of Trade, Industry and Energy of Korea Government under Grant No. 19-CM-GU-01
History
School
Mechanical, Electrical and Manufacturing Engineering
This article may be downloaded for personal use only. Any other use requires prior permission of the author and AIP Publishing. This article appeared in Hyoungcheol Kwon, Hyunsuk Huh, Hwiwon Seo, Songhee Han, Imhee Won, Jiwoong Sue, Dongyean Oh, Felipe Iza, Seungchul Lee, Sung Kye Park, and Seonyong Cha , "TCAD augmented generative adversarial network for hot-spot detection and mask-layout optimization in a large area HARC etching process", Physics of Plasmas 29, 073504 (2022) https://doi.org/10.1063/5.0093076 and may be found at https://doi.org/10.1063/5.0093076.