Adaptive Canonical Correlation Analysis Method Based on Forgetting Factor for Fault Detection

J. Guan, Jinghui Yang, Guang Wang
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Abstract

In this paper, an adaptive canonical correlation analysis method is proposed for fault detection in time-varying processes. Firstly, a designed forgetting factor is used to update the canonical correlation analysis (CCA) model that builded with initial normal process data. Then, Mahalanobis distance is introduced as a classifier to distinguish whether data changes are caused by system modal changes or system abnormalities. In this way, the new model can not only be updated according to the system modality in real time, but also can accurately response to the occurrence of faults. Compared with traditional CCAbased methods, the proposed new method has the following two advantages: 1) it has a wider range of application scenarios since it can adapt to slow changes in the system or changes in operating points; and 2) it has a smaller amount of calculation because it only performs a simple data classification rather than require complex iterative operations on the threshold. The effectiveness of the new method is verified in a simulated superheated steam spray water temperature reduction process.
基于遗忘因子的自适应典型相关分析方法用于故障检测
本文提出了一种用于时变过程故障检测的自适应典型相关分析方法。首先,利用设计的遗忘因子对初始正常过程数据建立的典型相关分析(CCA)模型进行更新;然后,引入马氏距离作为分类器,区分数据变化是由系统模态变化还是系统异常引起的。这样,新模型不仅可以根据系统的模态实时更新,而且可以准确地响应故障的发生。与传统的基于ccabbased的方法相比,本文提出的新方法具有以下两个优点:1)可以适应系统缓慢变化或工作点变化,具有更广泛的应用场景;2)计算量较小,只进行简单的数据分类,不需要对阈值进行复杂的迭代操作。通过模拟过热蒸汽喷雾降水温过程,验证了新方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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