使用机器学习模型的计算光刻

Y. Shin
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引用次数: 5

摘要

自2010年左右以来,机器学习模型已广泛应用于计算光刻应用。它们提供了更高的建模能力,因此它们的应用程序允许更高精度的建模。许多计算成本高的应用程序可以利用机器学习模型,因为训练有素的模型可以快速估计结果。本教程回顾了一些使用机器学习模型的计算光刻应用。它们包括使用OPC(光学接近校正)和EPC(蚀刻接近校正)的掩模优化,辅助特征插入及其可印刷性检查,使用光学模型和抗蚀剂模型的光刻建模,测试模式以及热点检测和校正。
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Computational Lithography Using Machine Learning Models
Machine learning models have been applied to a wide range of computational lithography applications since around 2010. They provide higher modeling capability, so their application allows modeling of higher accuracy. Many applications which are computationally expensive can take advantage of machine learning models, since a well trained model provides a quick estimation of outcome. This tutorial reviews a number of such computational lithography applications that have been using machine learning models. They include mask optimization with OPC (optical proximity correction) and EPC (etch proximity correction), assist features insertion and their printability check, lithography modeling with optical model and resist model, test patterns, and hotspot detection and correction.
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来源期刊
IPSJ Transactions on System LSI Design Methodology
IPSJ Transactions on System LSI Design Methodology Engineering-Electrical and Electronic Engineering
CiteScore
1.20
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