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Fault Detection for Non-Gaussian Processes Using Generalized Canonical Correlation Analysis and Randomized Algorithms

机译:广义规范相关分析和随机算法的非高斯过程故障检测

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摘要

In this paper, we first study a generalized canonical correlation analysis (CCA)-based fault detection (FD) method aiming at maximizing the fault detectability under an acceptable false alarm rate. More specifically, two residual signals are generated for detecting of faults in input and output subspaces, respectively. The minimum covariances of the two residual signals are achieved by taking the correlation between input and output into account. Considering the limited application scope of the generalized CCA due to the Gaussian assumption on the process noises, an FD technique combining the generalized CCA with the threshold-setting based on the randomized algorithm is proposed and applied to the simulated traction drive control system of high-speed trains. The achieved results show that the proposed method is able to improve the detection performance significantly in comparison with the standard generalized CCA-based FD method.
机译:在本文中,我们首先研究一种基于通用规范相关分析(CCA)的故障检测(FD)方法,旨在在可接受的误报率下最大化故障的可检测性。更具体地说,产生两个残余信号以分别检测输入和输出子空间中的故障。通过考虑输入和输出之间的相关性,可以实现两个残差信号的最小协方差。考虑到由于过程噪声的高斯假设而导致的通用CCA的适用范围有限,提出了一种基于随机算法将通用CCA与阈值设置相结合的FD技术,并将其应用到高牵引力的模拟牵引驱动控制系统中高速列车。所得结果表明,与标准的基于通用CCA的FD方法相比,该方法能够显着提高检测性能。

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