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基于特征子空间的KPCA及其在故障检测与诊断中的应用
引用本文:付克昌,吴铁军.基于特征子空间的KPCA及其在故障检测与诊断中的应用[J].化工学报,2006,57(11):2664-2669.
作者姓名:付克昌  吴铁军
作者单位:浙江大学工业控制国家重点实验室,智能系统与决策研究所,浙江 杭州 310027
基金项目:国家高技术研究发展计划(863计划)
摘    要:针对标准KPCA(kernel principal component analysis)不适合大样本分析的缺点,提出了一种基于特征子空间的KPCA(FS_KPCA)及其故障检测与诊断方法,该方法通过构建具有较小维数的特征子空间上的正交基来简化核矩阵,从而降低KPCA的计算复杂性.与标准KPCA方法相比,FS_KPCA方法具有更高的计算效率且只需较小的计算机存储空间.通过非等温连续反应釜过程的故障检测与诊断的应用实例,说明了本算法的有效性.

关 键 词:主成分分析  PCA  核PCA  故障检测  故障诊断
文章编号:0438-1157(2006)11-2664-06
收稿时间:09 23 2005 12:00AM
修稿时间:2005-09-232006-03-06

Feature subspace based KPCA and its application to fault detection and diagnosis
FU Kechang,WU Tiejun.Feature subspace based KPCA and its application to fault detection and diagnosis[J].Journal of Chemical Industry and Engineering(China),2006,57(11):2664-2669.
Authors:FU Kechang  WU Tiejun
Affiliation:State Key Laboratory of Industrial Control Technology, Institute of Intelligent Systems and Decision Making, Zhejiang University, Hangzhou 310027, Zhejiang, China
Abstract:A feature subspace based kernel principal component analysis(KPCA),method (FSKPCA)and its application to fault detection and diagnosis are presented in this paper to overcome the shortcoming of the standard KPCA method which is not appropriate to deal with a large number of training data.FSKPCA simplifies the kernel matrix and reduces the computational cost of KPCA by constructing a lower-dimensional orthonormal based on feature subspace.When applied to process monitoring, the FSKPCA-based method is more efficient in computation and needs less computer memory than standard KPCA-based methods.Computer simulation of non-isothermal CSTR process monitoring demonstrates the effectiveness and efficiency of the proposed method.
Keywords:principal component analysis  PCA  kernel PCA  fault detection  fault diagnosis
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