Applied sensor fault detection and validation using transposed input data PCA and ANNs

Yu Zhang, C. Bingham, M. Gallimore, Zhijing Yang, Jun Chen
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引用次数: 9

Abstract

The paper presents an efficient approach for applied sensor fault detection based on an integration of principal component analysis (PCA) and artificial neural networks (ANNs). Specifically, PCA-based y-indices are introduced to measure the differences between groups of sensor readings in a time rolling window, and the relative merits of three types of ANNs are compared for operation classification. Unlike previously reported PCA techniques (commonly based on squared prediction error (SPE)) which can readily detect a sensor fault wrongly when the system data is subject bias or drifting as a result of power or loading changes, here, it is shown that the proposed methodologies are capable of detecting and identifying the emergence of sensor faults during transient conditions. The efficacy and capability of the proposed approach is demonstrated through their application on measurement data taken from an industrial generator.
利用转置输入数据的主成分分析和人工神经网络进行传感器故障检测和验证
提出了一种基于主成分分析(PCA)和人工神经网络(ann)相结合的应用传感器故障检测方法。具体而言,引入基于pca的y指数来衡量时间滚动窗口内传感器读数组之间的差异,并比较了三种神经网络的相对优点进行操作分类。与先前报道的PCA技术(通常基于平方预测误差(SPE))不同,当系统数据由于功率或负载变化而受到偏差或漂移时,PCA技术很容易错误地检测到传感器故障,而本文表明,所提出的方法能够在瞬态条件下检测和识别传感器故障的出现。通过对工业发电机测量数据的应用,证明了该方法的有效性和能力。
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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