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Fault Identification for Industrial Process Based on KPCA-SSVM

机译:基于KPCA-SSVM的工业过程故障识别

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Industrial fault identification is significant for finding fault reason and remedying the potential safety problems. As kernel principal components analysis (KPCA) has excellent performance in nonlinear data processing, a kind of fault identification method is proposed based on KPCA and simple support vector machine (SSVM). KPCA was applied to choose the nonlinear principal component of the model input data space, and SSVM was applied to establish fault identification modeling, which could not only enhance the efficiency of calculation, but also could improve the fault identification ability. The proposed KPCA-SSVM was applied to the Tennessee Eastman Process (TEP). Simulation indicates that this method features high learning speed and good identification ability compared with SVM, PCA-SSVM and KPCA-SVM, and is proved to be an efficient fault identification modeling method.
机译:工业故障识别对于发现故障原因和补救潜在的安全问题具有重要意义。由于核主成分分析(KPCA)在非线性数据处理中具有优异的性能,提出了一种基于核主成分分析和简单支持向量机(SSVM)的故障识别方法。利用KPCA选择模型输入数据空间的非线性主成分,采用SSVM建立故障识别模型,不仅可以提高计算效率,而且可以提高故障识别能力。拟议的KPCA-SSVM已应用于田纳西伊士曼过程(TEP)。仿真表明,与SVM,PCA-SSVM和KPCA-SVM相比,该方法学习速度快,识别能力强,是一种有效的故障识别建模方法。

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