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公开(公告)号:US20210405521A1
公开(公告)日:2021-12-30
申请号:US17180984
申请日:2021-02-22
Applicant: Samsung Electronics Co., Ltd.
Inventor: Taehoon Kim , Jaeho Jeong , Jeonghoon Ko , Jongwon Kim , Yejin Jeong , Changwook Jeong
IPC: G03F1/36 , G03F7/20 , H01L21/027
Abstract: A proximity correction method for a semiconductor manufacturing process includes: generating a plurality of pieces of original image data from a plurality of sample regions, with the sample regions selected from layout data used in the semiconductor manufacturing process; removing some pieces of original image data that overlap with each other from the plurality of pieces of original image data, resulting in a plurality of pieces of input image data; inputting the plurality of pieces of input image data to a machine learning model; obtaining a prediction value of critical dimensions of target patterns included in the plurality of pieces of input image data from the machine learning model; measuring a result value for critical dimensions of actual patterns corresponding to the target patterns on a semiconductor substrate on which the semiconductor manufacturing process is performed; and performing learning of the machine learning model using the prediction value and the result value.
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公开(公告)号:US11733603B2
公开(公告)日:2023-08-22
申请号:US17180984
申请日:2021-02-22
Applicant: Samsung Electronics Co., Ltd.
Inventor: Taehoon Kim , Jaeho Jeong , Jeonghoon Ko , Jongwon Kim , Yejin Jeong , Changwook Jeong
IPC: G03F1/36 , H01L21/027 , G03F7/20 , G03F7/00
CPC classification number: G03F1/36 , G03F7/70441 , G03F7/70625 , H01L21/027
Abstract: A proximity correction method for a semiconductor manufacturing process includes: generating a plurality of pieces of original image data from a plurality of sample regions, with the sample regions selected from layout data used in the semiconductor manufacturing process; removing some pieces of original image data that overlap with each other from the plurality of pieces of original image data, resulting in a plurality of pieces of input image data; inputting the plurality of pieces of input image data to a machine learning model; obtaining a prediction value of critical dimensions of target patterns included in the plurality of pieces of input image data from the machine learning model; measuring a result value for critical dimensions of actual patterns corresponding to the target patterns on a semiconductor substrate on which the semiconductor manufacturing process is performed; and performing learning of the machine learning model using the prediction value and the result value.
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