一种人工智能转换模型——半导体制造中光罩的pod再设计

IF 4 Q2 ENGINEERING, INDUSTRIAL Journal of Industrial and Production Engineering Pub Date : 2023-11-08 DOI:10.1080/21681015.2023.2279101
Shu-Kai S. Fan, Ming-Shen Chen, Chia-Yu Hsu, You-Jin Park
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引用次数: 0

摘要

摘要本文提出了一种新的企业智能化框架,即从流程转型到人工智能转型。该转换框架可分为人工智能战略规划的概念模型、过程模型、操作模型和分析模型。对于尖端的微芯片生产,提出了一个新的人工智能改造项目,该项目涉及台湾一家中型半导体工具供应商设计的十字线SMIF pod (RSP)传输系统。与现有的RSP系统相比,从实施所提出的人工智能转换项目中获得的技术优势是多方面的。在半导体制造工厂的基础上,吞吐量和成品率显着增加。每个FAB的洁净室建设成本减少了约300万美元,这主要归功于重新设计的自动光学检测流程。所提出的基于模型的框架被证明是半导体制造中从工艺转换到人工智能转换的可行工具。关键词:工艺转换人工智能转换辅助智能半导体制造网SMIF pod (RSP)披露声明作者未报告潜在的利益冲突。shu - kai S. Fan, 1996年获得德克萨斯大学阿灵顿分校工业、制造和系统工程博士学位。现任国立台北理工大学工业工程与管理系教授,现任Taylor and Francis出版的《工程优化》杂志主编。他的研究兴趣包括质量工程、图像处理、大数据分析、机器/深度学习以及半导体制造的先进过程控制。陈明申,台湾国立台北理工大学信息与财务管理硕士,主要研究方向为半导体制造的先进过程控制和深度学习在工业中的应用。他现在在Stek股份有限公司担任总经理。徐佳宇,国立台湾科技大学工业管理系教授。2002年获国立中山大学统计学学士学位,2004年获国立清华大学工业工程与工程管理硕士学位,2009年获国立清华大学工业工程与工程管理博士学位。他目前的研究兴趣包括大数据分析、机器学习和深度学习、制造智能、缺陷检测、故障检测、时间序列数据分析和预测性维护。朴友进,现任台湾国立台北工业大学工业工程与管理系教授,获美国亚利桑那州立大学工业工程博士学位。主要研究方向为质量工程、高级过程控制和少量射击学习。
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An artificial intelligence transformation model – pod redesign of photomasks in semiconductor manufacturing
ABSTRACTThis paper proposes a new enterprise intelligentization framework, by making the transition from process transformation to artificial intelligence (AI) transformation. The novel transformation framework can be decomposed into the conceptual model of AI strategic planning, the procedural model, the operational model, and the analytics model. For leading-edge microchip production, a new AI transformation project regarding the reticle SMIF pod (RSP) transport system designed by a medium-sized semiconductor tool vendor in Taiwan is presented. The technical advantages, gained from the implementation of the presented AI transformation project, over the existing RSP systems are manifold. The throughput and yield rate significantly increase on a semiconductor-fabrication-plant basis. The clean room construction costs less by approximately 3 million dollars per FAB, mainly attributed to the redesigned automatic optical inspection flow. The proposed model-based framework proves to be a viable tool from the process transformation to the AI transformation in the semiconductor manufacturing.KEYWORDS: Process transformationAI transformationassisted intelligencesemiconductor manufacturingreticle SMIF pod (RSP) Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationNotes on contributorsShu-Kai S. FanShu-Kai S. Fan received the Ph.D. degree in Industrial, Manufacturing and Systems Engineering from the University of Texas at Arlington in 1996. He is currently a professor in the Department of Industrial Engineering and Management, National Taipei University of Technology (NTUT), Taiwan, R.O.C. Dr. Fan now serves as Editor-in-Chief of Engineering Optimization published by Taylor and Francis. His research interests include quality engineering, image processing, big data analytics, machine/deep learning, and advanced process control of semiconductor manufacturing.Ming-Shen ChenMing-Shen Chen received his M.S. degree in Information and Financial Management from National Taipei University of Technology (NTUT), Taiwan, R.O.C. His research interests include advanced process control of semiconductor manufacturing, and deep learning applications in industry. He now works in Stek Co. Ltd as the general manager.Chia-Yu HsuChia-Yu Hsu is a professor in the Department of Industrial Management, National Taiwan University of Science and Technology (NTUST). He received B.S. in Statistics from National Chung Kung University (2002), M.S. in Industrial Engineering and Engineering Management from National Tsing Hua University (2004) and Ph.D. in Industrial Engineering and Engineering Management from National Tsing Hua University (2009). His current research interests include big data analytics, machine learning & deep learning, manufacturing intelligence, defect inspection, fault detection, time series data analysis and predictive maintenance.You-Jin ParkYou-Jin Park is currently a professor in the Department of Industrial Engineering and Management, National Taipei University of Technology (NTUT), Taiwan, R.O.C. He received the Ph.D. degree in Industrial Engineering from Arizona State University, Tempe, AZ, US. His research interests include quality engineering, advanced process control and few shot learning.
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