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公开(公告)号:US11074376B2
公开(公告)日:2021-07-27
申请号:US15497489
申请日:2017-04-26
Applicant: UNITED MICROELECTRONICS CORP.
Inventor: Ya-Ching Cheng , Chun-Liang Hou , Chien-Hung Chen , Wen-Jung Liao , Min-Chin Hsieh , Da-Ching Liao , Li-Chin Wang
IPC: G06F30/20
Abstract: A method for analyzing a process output and a method for creating an equipment parameter model are provided. The method for analyzing the process output includes the following steps: A plurality of process steps are obtained. A processor obtains a step model set including a plurality of first step regression models, each of which represents a relationship between N of the process steps and a process output. The processor calculates a correlation of each of the first step regression models. The processor picks up at least two of the first step regression models to be a plurality of second step regression models whose correlations are ranked at top among the correlations of the first step regression models. The processor updates the step model set by a plurality of third step regression models, each of which represents a relationship between M of the process steps and the process output.
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公开(公告)号:US20180314773A1
公开(公告)日:2018-11-01
申请号:US15497489
申请日:2017-04-26
Applicant: UNITED MICROELECTRONICS CORP.
Inventor: Ya-Ching Cheng , Chun-Liang Hou , Chien-Hung Chen , Wen-Jung Liao , Min-Chin Hsieh , Da-Ching Liao , Li-Chin Wang
IPC: G06F17/50
Abstract: A method for analyzing a process output and a method for creating an equipment parameter model are provided. The method for analyzing the process output includes the following steps: A plurality of process steps are obtained. A processor obtains a step model set including a plurality of first step regression models, each of which represents a relationship between N of the process steps and a process output. The processor calculates a correlation of each of the first step regression models. The processor picks up at least two of the first step regression models to be a plurality of second step regression models whose correlations are ranked at top among the correlations of the first step regression models. The processor updates the step model set by a plurality of third step regression models, each of which represents a relationship between M of the process steps and the process output.
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