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Modeling and monitoring of nonlinear multi-mode processes based on similarity measure-KPCA 被引量:10

Modeling and monitoring of nonlinear multi-mode processes based on similarity measure-KPCA
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摘要 A new modeling and monitoring approach for multi-mode processes is proposed.The method of similarity measure(SM) and kernel principal component analysis(KPCA) are integrated to construct SM-KPCA monitoring scheme,where SM method serves as the separation of common subspace and specific subspace.Compared with the traditional methods,the main contributions of this work are:1) SM consisted of two measures of distance and angle to accommodate process characters.The different monitoring effect involves putting on the different weight,which would simplify the monitoring model structure and enhance its reliability and robustness.2) The proposed method can be used to find faults by the common space and judge which mode the fault belongs to by the specific subspace.Results of algorithm analysis and fault detection experiments indicate the validity and practicability of the presented method. A new modeling and monitoring approach for multi-mode processes is proposed.The method of similarity measure(SM) and kernel principal component analysis(KPCA) are integrated to construct SM-KPCA monitoring scheme,where SM method serves as the separation of common subspace and specific subspace.Compared with the traditional methods,the main contributions of this work are:1) SM consisted of two measures of distance and angle to accommodate process characters.The different monitoring effect involves putting on the different weight,which would simplify the monitoring model structure and enhance its reliability and robustness.2) The proposed method can be used to find faults by the common space and judge which mode the fault belongs to by the specific subspace.Results of algorithm analysis and fault detection experiments indicate the validity and practicability of the presented method.
作者 WANG Xiao-gang HUANG Li-wei ZHANG Ying-wei 王小刚;黄立伟;张颖伟(College of Information Science and Engineering, Northeastern University, Shenyang 110819, China)
出处 《Journal of Central South University》 SCIE EI CAS CSCD 2017年第3期665-674,共10页 中南大学学报(英文版)
基金 Projects(61273163,61325015,61304121)supported by the National Natural Science Foundation of China
关键词 process monitoring kernel principal component analysis (KPCA) similarity measure subspace separation 监控方法 过程建模 KPCA 多模式 相似度量 非线性 核主成分分析 判断故障
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