Enhanced statistical analysis of nonlinear processes using KPCA, KICA and SVM

被引:187
作者
Zhang, Yingwei [1 ,2 ]
机构
[1] Univ Texas Austin, Dept Chem Engn, Austin, TX 78712 USA
[2] Northeastern Univ, Minist Educ, Key Lab Integrated Automat Proc Ind, Shenyang 110004, Liaoning, Peoples R China
关键词
Kernel principal component analysis (KPCA); Kernel independent component analysis (KICA); Support vector machine (SVM); Nonlinear process monitoring; Fault detection and diagnosis; PRINCIPAL COMPONENT ANALYSIS; FAULT-DETECTION; DISCRIMINANT-ANALYSIS; FEATURE-EXTRACTION; NEURAL-NETWORK; DIAGNOSIS; IDENTIFICATION; ALGORITHMS; PCA; ICA;
D O I
10.1016/j.ces.2008.10.012
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
In this paper, some drawbacks of original kernel independent component analysis (KICA) and support vector machine (SVM) algorithms are analyzed for the purpose of multivariate statistical process monitoring (MSPM). When the measured variables follow non-Gaussian distribution, KICA provides more meaningful knowledge by extracting higher-order statistics compared with PCA and kernel principal component analysis (KPCA). However. in real industrial processes, process variables are complex and are not absolutely Gaussian or non-Gaussian distributed. Any single technique is not sufficient to extract the hidden information. Hence. both KICA (non-Gaussion part) and KPCA (Gaussion part) are used for fault detection in this paper, which combine the advantages of KPCA and KICA to develop a nonlinear dynamic approach to detect fault online compared to other nonlinear approaches. Because SVM is available for classifying faults, it is used to diagnose fault in this paper. For above mentioned kernel methods, the calculation of eigenvectors and support vectors will be time consuming when the sample number becomes large. Hence, some dissimilar data are analyzed in the input and feature space. The proposed approach is applied to the fault detection and diagnosis in the Tennessee Eastman process. Application of the proposed approach indicates that proposed method effectively captures the nonlinear dynamics in the process variables. (C) 2008 Elsevier Ltd. All rights reserved.
引用
收藏
页码:801 / 811
页数:11
相关论文
共 55 条
[11]   Multiscale nonlinear principal component analysis (NLPCA) and its application for chemical process monitoring [J].
Geng, ZQ ;
Zhu, QX .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2005, 44 (10) :3585-3593
[12]  
Haykin S., 1999, Neural Networks, V2
[13]   Non-linear principal components analysis using genetic programming [J].
Hiden, HG ;
Willis, MJ ;
Tham, MT ;
Montague, GA .
COMPUTERS & CHEMICAL ENGINEERING, 1999, 23 (03) :413-425
[14]  
Hyvarinen A, 1998, ADV NEUR IN, V10, P273
[15]   Fast and robust fixed-point algorithms for independent component analysis [J].
Hyvärinen, A .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1999, 10 (03) :626-634
[16]  
Hyvärinen A, 2001, INDEPENDENT COMPONENT ANALYSIS: PRINCIPLES AND PRACTICE, P71
[17]   Independent component analysis:: algorithms and applications [J].
Hyvärinen, A ;
Oja, E .
NEURAL NETWORKS, 2000, 13 (4-5) :411-430
[18]   Improving process operations using support vector machines and decision trees [J].
Jemwa, GT ;
Aldrich, C .
AICHE JOURNAL, 2005, 51 (02) :526-543
[19]   Non-linear principal components analysis for process fault detection [J].
Jia, F ;
Martin, EB ;
Morris, AJ .
COMPUTERS & CHEMICAL ENGINEERING, 1998, 22 :S851-S854
[20]   Evolution of multivariate statistical process control: application of independent component analysis and external analysis [J].
Kano, M ;
Hasebe, S ;
Hashimoto, I ;
Ohno, H .
COMPUTERS & CHEMICAL ENGINEERING, 2004, 28 (6-7) :1157-1166