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A data-driven multidimensional visualization technique for process fault detection and diagnosis

机译:一种用于过程故障检测和诊断的数据驱动的多维可视化技术

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摘要

A multidimensional visualization technique is described for fault detection and diagnosis of a multivariate process by principal component analysis (PCA) of historical data. The technique uses a parallel coordinate system to visualize data that allows for monitoring of abnormal process events that lead to process faults, enabling the visualization of multiple principal components effectively and facilitating the study of how each principal component varies with respect to time. The principal component and residual space control limits are established for fault detection and the Random Forests machine learning tool is adopted for fault diagnosis. The key features of the methodology are demonstrated through a study of the benchmark Tennessee Eastman process. (C) 2016 Elsevier B.V. All rights reserved.
机译:描述了一种多维可视化技术,用于通过历史数据的主成分分析(PCA)对多变量过程进行故障检测和诊断。该技术使用平行坐标系来可视化数据,从而可以监控导致过程故障的异常过程事件,从而可以有效地可视化多个主要成分,并有助于研究每个主要成分随时间变化的情况。建立了用于故障检测的主成分和剩余空间控制极限,并采用了Random Forests机器学习工具进行故障诊断。通过对基准田纳西·伊士曼过程的研究,证明了该方法的关键特征。 (C)2016 Elsevier B.V.保留所有权利。

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