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Improved Statistical Method Based Exponentially Weighted GLRT Chart and Its Application to Fault Detection

机译:基于基于指数加权GLRT图表的改进统计方法及其在故障检测中的应用

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This paper deals with fault detection (FD) of chemical processes. Our previous study [1] has proved the effectiveness of multiscale principal component analysis (MSPCA)-based Moving Window (MW)-Generalized Likelihood Ratio Test (GLRT) to detect faults by maximizing the detection probability for a particular false alarm rate with different values of windows. However, the conventional PCA method is not suitable in nonlinear processes. In fact, this lack affects the monitoring system. To address this problem, we propose, first, to use multistage kernel PCA (MSKPCA) technique to extract the deterministic features and compute the principal components (PCs) in the original space. Second, integrate exponentially weighted moving average (EWMA), that has shown better abilities to reduce the false alarm rates and enhance the FD performances. Therefore, this work focuses on extending MSKPCA, and developing a MSKPCA-based EWMA-GLRT technique in order to improve the FD performance. The performances of the MSKPCA -based EWMAGLRT are illustrated using Tennessee Eastman benchmark process.
机译:本文涉及化学过程的故障检测(FD)。我们以前的研究[1]证明了多尺度主成分分析(MW)的移动窗口(MW) - 一成本的似然比测试(GLRT)的有效性来检测故障,以便为具有不同值的特定误报率的特定误报率的检测概率来检测故障窗户。然而,传统的PCA方法不适用于非线性过程。事实上,这种缺陷会影响监测系统。为了解决这个问题,我们建议首先使用多级内核PCA(MSKPCA)技术来提取确定性特征,并计算原始空间中的主组件(PC)。其次,集成指数加权移动平均(EWMA),这表明了降低误报率的更好的能力,并增强FD性能。因此,这项工作侧重于扩展MSKPCA,并开发基于MSKPCA的EWMA-GLRT技术,以提高FD性能。使用田纳西州的Eastman基准过程说明了基于MSKPCA的eWMAGLT的性能。

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