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Probabilistic Contribution Analysis For Statistical Process Monitoring: A Missing Variable Approach

机译:统计过程监视的概率贡献分析:缺失变量法

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摘要

Probabilistic models, including probabilistic principal component analysis (PPCA) and PPCA mixture models, have been successfully applied to statistical process monitoring. This paper reviews these two models and discusses some implementation issues that provide alternative perspective on their application to process monitoring. Then a probabilistic contribution analysis method, based on the concept of missing variable, is proposed to facilitate the diagnosis of the source behind the detected process faults. The contribution analysis technique is demonstrated through its application to both PPCA and PPCA mixture models for the monitoring of two industrial processes. The results suggest that the proposed method in conjunction with PPCA model can reduce the ambiguity with regard to identifying the process variables that contribute to process faults. More importantly it provides a fault identification approach for PPCA mixture model where conventional contribution analysis is not applicable.
机译:概率模型,包括概率主成分分析(PPCA)和PPCA混合模型,已成功应用于统计过程监控。本文回顾了这两个模型,并讨论了一些实现问题,这些问题为将它们应用于过程监控提供了替代观点。然后,基于缺失变量的概念,提出了一种概率贡献分析方法,以方便对所检测到的过程故障背后的原因进行诊断。通过将其应用于PPCA和PPCA混合模型以监控两个工业过程,证明了贡献分析技术。结果表明,所提出的方法与PPCA模型相结合可以减少识别过程变量的模棱两可性。更重要的是,它为常规贡献分析不适用的PPCA混合模型提供了一种故障识别方法。

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