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An improved KPCA algorithm of chemical process fault diagnosis based on RVM

机译:基于RVM的化工过程故障诊断的改进KPCA算法。

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KPCA-SVM algorithm is a combination of kernel principal component analysis (KPCA) and support vector machine (SVM). It could increase the diagnosis time and decrease the diagnosis efficiency, because more relevant vectors are needed when it is used to monitor the on-line complex chemical process. According to this problem, another combined algorithm which is composed of kernel principal component analysis and relevance vector machine (RVM) is proposed in this paper. Firstly, KPCA-RVM algorithm uses KPCA to structure T2 statistics and SPE statistics in the feature space to detect fault, and then it takes the non-linear principal component score vector of samples as the input of relevance vector machine to identify the fault modes. KPCA-RVM algorithm is applied to Tennessee Eastman (TE) chemical process and many kinds of fault mode simulation results show that this algorithm not only can obtain higher fault diagnosis accuracy than KPCA-SVM, but also can raise the speed of fault diagnosis obviously owing to the less necessary relevant vectors.
机译:KPCA-SVM算法是内核主成分分析(KPCA)和支持向量机(SVM)的组合。这可能会增加诊断时间并降低诊断效率,因为在用于监视在线复杂化学过程时需要更多相关的向量。针对这一问题,提出了一种由核主成分分析和相关向量机(RVM)组成的组合算法。首先,KPCA-RVM算法使用KPCA在特征空间中构造T 2 统计量和SPE统计量来检测故障,然后将样本的非线性主成分得分矢量作为相关性输入。向量机识别故障模式。将KPCA-RVM算法应用于田纳西州伊斯特曼(TE)化工过程,多种故障模式仿真结果表明,该算法不仅可以获得比KPCA-SVM高的故障诊断精度,而且由于其故障诊断速度明显提高到不太必要的相关向量。

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