Nonlinear process monitoring based on kernel dissimilarity analysis

被引:59
作者
Zhao, Chunhui [1 ]
Wang, Fuli [1 ]
Zhang, Yingwei [1 ]
机构
[1] Northeastern Univ, Sch Informat Sci & Engn, Shenyang, Liaoning, Peoples R China
基金
中国国家自然科学基金;
关键词
Kernel dissimilarity analysis; Nonlinear processes; Distribution structure; Nonlinear kernel mapping; Kernel trick; High-dimensional feature space; PARTIAL LEAST-SQUARES; FAULT-DIAGNOSIS; COMPONENT ANALYSIS; FEATURE-EXTRACTION; IDENTIFICATION; REGRESSION; PCA;
D O I
10.1016/j.conengprac.2008.07.001
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
To overcome the disadvantage of linear dissimilarity analysis (DISSIM) when monitoring nonlinear processes, a kernel dissimilarity analysis algorithm, termed KDISSIM here, is presented, which is the nonlinear version of DISSIM algorithm. A kernel dissimilarity index is introduced to quantitatively evaluate the differences between nonlinear data distribution structures, which can reflect the changes of nonlinear process correlations and operating conditions. In KDISSIM algorithm, the input space is first nonlinearly mapped into a high-dimensional feature space, where the initial nonlinear correlations are changed into linear ones. Then the process operating condition can be effectively tracked by investigating the linear data distributions in the feature space. The idea and effectiveness of the proposed algorithm are illustrated with respect to the simulated data collected from one typical nonlinear numerical process and the well-known Tennessee Eastman benchmark chemical process. Both the results show that the proposed method works well to Capture the underlying nonlinear process correlations thus providing a feasible and promising solution for nonlinear process monitoring. (C) 2008 Elsevier Ltd. All rights reserved.
引用
收藏
页码:221 / 230
页数:10
相关论文
共 38 条
[1]   Monitoring a complex refining process using multivariate statistics [J].
AlGhazzawi, Ashraf ;
Lennox, Barry .
CONTROL ENGINEERING PRACTICE, 2008, 16 (03) :294-307
[2]   Generalized discriminant analysis using a kernel approach [J].
Baudat, G ;
Anouar, FE .
NEURAL COMPUTATION, 2000, 12 (10) :2385-2404
[3]   On-line batch process monitoring using dynamic PCA and dynamic PLS models [J].
Chen, JH ;
Liu, KC .
CHEMICAL ENGINEERING SCIENCE, 2002, 57 (01) :63-75
[4]   The application of principal component analysis and kernel density estimation to enhance process monitoring [J].
Chen, Q ;
Wynne, RJ ;
Goulding, P ;
Sandoz, D .
CONTROL ENGINEERING PRACTICE, 2000, 8 (05) :531-543
[5]   Fault detection and identification of nonlinear processes based on kernel PCA [J].
Choi, SW ;
Lee, C ;
Lee, JM ;
Park, JH ;
Lee, IB .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2005, 75 (01) :55-67
[6]  
CORTES C, 1995, MACH LEARN, V20, P273, DOI 10.1023/A:1022627411411
[7]  
Cristianini N., 2000, INTRO SUPPORT VECTOR
[8]   Plant-wide detection and diagnosis using correspondence analysis [J].
Detroja, K. P. ;
Gudi, R. D. ;
Patwardhan, S. C. .
CONTROL ENGINEERING PRACTICE, 2007, 15 (12) :1468-1483
[9]   A PLANT-WIDE INDUSTRIAL-PROCESS CONTROL PROBLEM [J].
DOWNS, JJ ;
VOGEL, EF .
COMPUTERS & CHEMICAL ENGINEERING, 1993, 17 (03) :245-255
[10]  
Haykin S., 1999, Neural Networks, V2