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Fault detection using Linear Discriminant Analysis with selection of process variables and time lags

机译:使用线性判别分析进行故障检测,并选择过程变量和时滞

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This paper is concerned with the selection of process variables and time lags for fault detection. For this purpose, a feature selection technique known as Successive Projections Algorithm (SPA) is employed with Linear Discriminant Analysis (LDA) classifiers to discriminate between normal operating conditions and faults. SPA was originally designed to minimize multicollinearity among the selected features, which is a known cause of generalization problems for LDA. In the present work, a modification to the basic SPA formulation is proposed to place larger emphasis on the selection of relevant features for the classification task. The proposed SPA-LDA methodology is illustrated in a case study involving the Tennessee Eastman benchmark process. For comparison, a genetic algorithm (GA) for feature selection is also employed. In this study, the pre-selection of process variables was found to improve the accuracy of the resulting classifiers. In practice, such a pre-selection would have the extra advantage of reducing the number of sensors required to detect a given fault. Moreover, the proposed modification in SPA-LDA resulted in an improvement of average classification accuracy from 88% to 96%. This result was similar to that obtained by GA-LDA (97%). However, the SPA-LDA classifiers were found to be less sensitive to measurement noise.
机译:本文涉及用于故障检测的过程变量和时滞的选择。为此,将特征选择技术(称为连续投影算法(SPA))与线性判别分析(LDA)分类器一起使用,以区分正常运行状况和故障。 SPA最初旨在将所选功能之间的多重共线性最小化,这是导致LDA泛化问题的已知原因。在目前的工作中,提出了对基本SPA公式的修改,以更加侧重于分类任务的相关特征的选择。涉及田纳西伊士曼基准流程的案例研究说明了所建议的SPA-LDA方法。为了进行比较,还采用了用于特征选择的遗传算法(GA)。在这项研究中,发现过程变量的预选可提高所得分类器的准确性。实际上,这种预选将具有减少检测给定故障所需的传感器数量的额外优势。此外,对SPA-LDA的拟议修改使平均分类准确度从88%提高到96%。该结果与GA-LDA获得的结果相似(97%)。但是,发现SPA-LDA分类器对测量噪声不那么敏感。

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