GAGAN: Global Attention Generative Adversarial Networks for Semiconductor Advanced Process Control

Hsiu-Hui Hsiao,Kung-Jeng Wang

IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING(2024)

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摘要
This paper addresses the quality control of the photolithography process in the semiconductor industry. Overlay errors in the process seriously affect the wafer yield, and cause the wafer to be forced to rework and affect the production efficiency of the equipment. We examine the current state of its process control, develop a novel overlay predict model, and verify the prediction results. This study proposes a Global Attention Generative Adversarial Networks (GAGAN) model to precisely predict the overlay error for the feed-forward data of the front layer, which is used as the important information and process parameters for the advanced process control of the current layer. Experiment results on a semiconductor shop-floor confirms that our proposed method achieves high predictive performance while maintaining extensibility and visual quality.
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关键词
Lithography,Process control,Semiconductor device modeling,Generative adversarial networks,Predictive models,Generators,Semiconductor device manufacture,Advanced process control,generative adversarial network,photolithography,overlay
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