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Dynamic kernel scatter-difference-based discriminant analysis for diagnosis of Tennessee Eastman process

机译:基于动态核散度差异的判别分析,用于田纳西伊士曼过程的诊断

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A dynamic kernel scatter-difference-based discriminant analysis (DKSDA) method, that addresses overlapping and auto-correlated data resulting from different types of abnormal situations, is proposed here for fault diagnosis of nonlinear chemical processes. The proposed method is based on scatter-difference-based discriminant analysis performed in a high dimensional nonlinear feature space that is obtained via nonlinear kernel transformation of a suitably lagged, dynamic representation of the variables. The DKSDA overcomes the singularity problem of within-class-scatter matrix that is encountered in kernel Fisher discriminant analysis (KFDA), by considering scatter difference form of the Fisher criterion. Fault diagnosis is performed by scores classification using the nearest neighbor classifier in DKSDA space. The performance of the proposed method is evaluated by applying it for the isolation of complex faults in the Tennessee Eastman process. The results demonstrate the superiority of the DKSDA over other recently reported nonlinear classification methods.
机译:为了解决非线性化学过程的故障,在此提出了一种基于动态核散度差异判别分析(DKSDA)的方法,该方法可解决由于不同类型的异常情况而导致的重叠数据和自相关数据。所提出的方法基于在高维非线性特征空间中执行的基于散射差异的判别分析,该特征分析是通过对变量进行适当滞后的动态表示的非线性核变换而获得的。 DKSDA通过考虑Fisher准则的散度差形式,克服了内核Fisher判别分析(KFDA)中遇到的类内散布矩阵的奇异性问题。使用DKSDA空间中的最近邻分类器,通过分数分类来执行故障诊断。通过将其用于田纳西伊士曼过程中复杂故障的隔离,评估了该方法的性能。结果证明了DKSDA优于其他最近报道的非线性分类方法。

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