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Recursive Dynamic Transformed Component Statistical Analysis for Fault Detection in Dynamic Processes

机译:动态过程中故障检测的递归动态变换分量统计分析

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摘要

This paper considers the problem of dynamic process monitoring. Based on the recently proposed recursive transformed component statistical analysis (RTCSA), its dynamic counterpart recursive dynamic transformed component statistical analysis (RDTCSA) is proposed. With time lag shift technique, the augmented sample covariance matrices are used for eigendecomposition and further data transformation. The obtained dynamic transformed components include dynamic information of measurements, whose statistics are used for process monitoring. The difference between RTCSA and RDTCSA for monitoring time-correlated process data is analyzed, which implies that RDTCSA is more sensitive to dynamic changes. In addition, the detectability of RDTCSA for monitoring time-correlated process data is analyzed in a statistical sense. A numerical simulation and the benchmark Tennessee Eastman process (TEP) both indicate the superior fault detectability of RDTCSA compared with the existing methods. Specifically, RDTCSA can effectively detect fault 15 in TEP with detection rate over 95%.
机译:本文考虑了动态过程监控的问题。基于最近提出的递归变换分量统计分析(RTCSA),提出了其动态对应的递归动态变换分量统计分析(RDTCSA)。通过时移技术,增强的样本协方差矩阵可用于特征分解和进一步的数据转换。获得的动态转换组件包括测量的动态信息,其统计信息用于过程监视。分析了RTCSA和RDTCSA在监视与时间相关的过程数据方面的区别,这表明RDTCSA对动态变化更敏感。此外,从统计意义上分析了RDTCSA用于监视与时间相关的过程数据的可检测性。数值模拟和基准的田纳西州伊士曼过程(TEP)均表明RDTCSA与现有方法相比具有优越的故障检测能力。具体而言,RDTCSA可以有效地检测TEP中的故障15,检出率超过95%。

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