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Fault Diagnosis of Chemical Processes Based on a novel Adaptive Kernel Principal Component Analysis

机译:基于新型自适应核心主成分分析的化学过程故障诊断

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The kernel principal component analysis (KPCA) is widely applied in fault diagnosis of complex nonlinear chemical processes. However, the cumulative contribution rate which extracts the kernel principal is obtained based on the subjective judgment of expert opinions. Therefore, this paper presents a novel adaptive kernel principal component analysis (AKPCA) based on a moving window integrating the threshold method to adaptively extract the kernel principal. The covariance matrix is obtained based on the kernel function. Then the value of the covariance matrix is adaptively judged by using a moving window integrating the threshold to select the core principal component. Finally, the proposed method is applied in the fault diagnosis of the Tennessee Eastman (TE) process in complex chemical processes. Compared with the KPCA and the KPCA based on the threshold, the results verify that this proposed method can improve the cumulative contribution rate beyond 95%, which accurately find the main factor of the fault diagnosis in the complex chemical process.
机译:核主成分分析(KPCA)广泛应用于复杂非线性化学过程的故障诊断。但是,基于专家意见的主观判断,获得提取内核校长的累积贡献率。因此,本文基于集成阈值方法以自适应提取内核校长的移动窗口提出了一种新的自适应内核主成分分析(AKPCA)。基于内核功能获得协方差矩阵。然后,通过使用将阈值集成以选择核心主组件的移动窗口自适应地判断协方差矩阵的值。最后,拟议的方法应用于复杂化学过程的田纳西州伊斯坦德(TE)过程的故障诊断。与基于阈值的KPCA和KPCA相比,结果验证了该提出的方法可以提高95%以上的累积贡献率,这准确地找到了复杂化学过程中断层诊断的主要因素。

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