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Kernel Canonical Variate Analysis for Nonlinear Dynamic Process Monitoring ?

机译:非线性动态过程监视的内核规范变量分析

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Effective monitoring of industrial processes provides many benefits. However, for dynamic processes with strong nonlinearity many existing techniques still cannot give satisfactory monitoring performance. This is evidenced by the well known Tennessee Eastman (TE) benchmark process, where some faults, e.g. Faults 3 and 9, have not been comfortably detected by almost all data-driven approaches published in the literature. This is because most data driven approaches, such as the principal component analysis (PCA) are linear. In recent years, powerful nonlinear analysis tools using kernel principles have been proposed. However, these tools have not been successfully applied to dynamic systems due to enormous dimensionality and complexity issues. This paper proposes nonlinear dynamic process monitoring based on kernel canonical variate analysis (KCVA). The proposed technique performs the traditional canonical variate analysis with KDE (CVA-KDE) in the kernel space generated from kernel PCA. The kernel PCA accounts for the nonlinearity in the process data while the CVA captures the process dynamics. The approach was tested on the TE benchmark problem for fault detection. The results obtained showed that KCVA detected faults at a higher rate and much earlier than CVA especially in the more difficult faults such as Faults 3 and 9 in the TE process which cause very little variation in the measured variables.
机译:有效监控工业过程可带来许多好处。但是,对于具有强非线性的动态过程,许多现有技术仍无法提供令人满意的监视性能。众所周知的田纳西·伊士曼(TE)基准测试过程证明了这一点,其中存在一些缺陷,例如文献中几乎所有数据驱动方法都无法轻松地检测到故障3和9。这是因为大多数数据驱动方法(例如主成分分析(PCA))都是线性的。近年来,已经提出了使用核原理的强大的非线性分析工具。但是,由于存在巨大的尺寸和复杂性问题,这些工具尚未成功应用于动态系统。本文提出了基于核规范变异分析(KCVA)的非线性动态过程监控。所提出的技术在内核PCA生成的内核空间中使用KDE(CVA-KDE)执行传统的规范变量分析。内核PCA解决了过程数据中的非线性问题,而CVA则捕获了过程动力学。该方法已在用于故障检测的TE基准问题上进行了测试。所获得的结果表明,KCVA能够比CVA更快地发现故障,并且比CVA早得多,特别是在TE过程中难度较大的故障(如故障3和9)中,这些变化几乎不会引起测量变量的变化。

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