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Part Mutual Information Based Quality-related Component Analysis for Fault Detection

机译:基于零件互信息的质量相关成分分析用于故障检测

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In this paper, a novel part mutual information based quality-related component analysis (PMIQCA) method is presented to detect quality-related faults and reduce the interference alarms. The low-dimensional subspace of process variables can be found, which reflects real-time changes in quality. The detection rates of quality-unrelated faults can be reduced while the detection rates of faults that are related to quality are increased. The basic idea is to select the most relevant process variables and principal components (PCs) with the maximal part mutual information (PMI) for each iteration, so as to build a more accurate supervisory relations between process variables and quality. Afterwards, two appropriate statistics are established for quality-related fault detection. Finally, the Tennessee Eastman Process (TEP) is carried out to demonstrate the effectiveness of PMIQCA.
机译:本文提出了一种新颖的基于零件互信息的质量相关组件分析(PMIQCA)方法,以检测与质量相关的故障并减少干扰警报。可以找到过程变量的低维子空间,它反映了质量的实时变化。与质量无关的故障的检测率可以降低,而与质量相关的故障的检测率可以提高。基本思想是为每次迭代选择最相关的过程变量和主成分(PC),并具有最大的零件互信息(PMI),以便在过程变量和质量之间建立更准确的监督关系。之后,建立两个适当的统计信息以进行质量相关的故障检测。最后,通过田纳西州伊士曼过程(TEP)证明了PMIQCA的有效性。

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