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Dynamic time warping based causality analysis for root-cause diagnosis of nonstationary fault processes

机译:基于动态时间规整的因果关系分析,用于非平稳故障过程的根本原因诊断

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It is very important to diagnose abnormal events in industrial processes. Based on normal operating data in a dynamic process, dynamic latent variable model provides a clear view of separating dynamic and static variations. Recent work by Li et al. (2014a) has shown an effective diagnosis in faulty variables with multidirectional reconstruction based contributions. Their further work took Granger causality analysis into accounts to explore the casual relations instead of only correlations. Although Granger causality is a widely used method for many applications, it needs time series to be stationary to calculate the causality index, which is not applicable for nonstationary fault processes. In this paper, a new causality analysis index based on dynamic time warping is proposed to determine the causal direction between pairs of faulty variables. The case study on the Tennessee Eastman process with a step fault shows the effectiveness of the proposed approach.
机译:诊断工业过程中的异常事件非常重要。基于动态过程中的正常运行数据,动态潜在变量模型提供了清晰的视图,可以将动态和静态变化分开。 Li等人的最新工作。 (2014a)显示了基于多方向重构的故障变量的有效诊断。他们的进一步工作将Granger因果关系分析考虑在内,以探索偶然关系​​,而不仅仅是相关性。尽管格兰杰因果关系是许多应用程序中广泛使用的方法,但它需要时间序列固定才能计算因果关系指标,这不适用于非平稳故障过程。本文提出了一种基于动态时间规整的新的因果关系分析指标来确定故障变量对之间的因果关系方向。田纳西州伊士曼过程中存在阶跃错误的案例研究表明了该方法的有效性。

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