基于迁移学习的自启动过程监控

IF 2.6 2区 工程技术 Q2 ENGINEERING, INDUSTRIAL Journal of Quality Technology Pub Date : 2021-10-28 DOI:10.1080/00224065.2021.1991251
Zhijun Wang, Chunjie Wu, Miaomiao Yu, F. Tsung
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引用次数: 2

摘要

传统的自启动控制方案在监测具有早期移位的过程时表现不佳,受到历史观测值采样数量的限制。在实际应用中,来自其他生产线的预先观察数据集总是可用的,这促使我们提出一种方案,使用从其他来源获得的历史数据来监视目标过程。从无监督迁移学习中自学聚类的方法被修改为从先前的观察中转移知识并改善失控(OC)性能,特别是对于早期转移的过程。但是,如果目标过程与预观察数据集之间的分布差异很大,我们的方案可能不是最好的。仿真结果和两个实例验证了该方案的优越性。
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Self-starting process monitoring based on transfer learning
Abstract Conventional self-starting control schemes can perform poorly when monitoring processes with early shifts, being limited by the number of historical observations sampled. In real applications, pre-observed data sets from other production lines are always available, prompting us to propose a scheme that monitors the target process using historical data obtained from other sources. The methodology of self-taught clustering from unsupervised transfer learning is revised to transfer knowledge from previous observations and improve out-of-control (OC) performance, especially for processes with early shifts. However, if the difference in distribution between the target process and the pre-observed data set is large, our scheme may not be the best. Simulation results and two illustrative examples demonstrate the superiority of the proposed scheme.
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来源期刊
Journal of Quality Technology
Journal of Quality Technology 管理科学-工程:工业
CiteScore
5.20
自引率
4.00%
发文量
23
审稿时长
>12 weeks
期刊介绍: The objective of Journal of Quality Technology is to contribute to the technical advancement of the field of quality technology by publishing papers that emphasize the practical applicability of new techniques, instructive examples of the operation of existing techniques and results of historical researches. Expository, review, and tutorial papers are also acceptable if they are written in a style suitable for practicing engineers. Sample our Mathematics & Statistics journals, sign in here to start your FREE access for 14 days
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