Improved nonlinear process monitoring using KPCA with sample vector selection and combined index

被引:12
作者
Sumana, C. [1 ,2 ]
Bhushan, Mani [1 ]
Venkateswarlu, Ch. [2 ]
Gudi, Ravindra D. [1 ]
机构
[1] Indian Inst Technol, Dept Chem Engn, Bombay 400076, Maharashtra, India
[2] Indian Inst Chem Technol, Hyderabad 500607, Andhra Pradesh, India
关键词
process monitoring; improved KPCA; SVS; CI; PRINCIPAL COMPONENT ANALYSIS; KERNEL; DIAGNOSIS;
D O I
10.1002/apj.573
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Kernel principal component analysis (KPCA) has been found to be one of the promising methods for nonlinear process monitoring in recent years. It effectively captures the data nonlinearities by transforming the original data using nonlinear kernel functions and then performs linear PCA in high-dimensional feature space F. However, KPCA is computationally intense, as it needs the solution of the eigenvalue decomposition problem involving a high-dimensional kernel matrix. The present work addresses this issue by adopting a sample vector selection (SVS) scheme that facilitates the analysis in a lower dimensional kernel space formed by a set of optimally selected transformed samples in F. These sample vectors are selected through an iterative sequential forward selection procedure based on a geometric consideration. Furthermore, the efficiency of the KPCA methodology is improved by proposing a combined index-based process monitoring in the reduced kernel space. The performance of the proposed methodology is evaluated by applying it to a complex nonlinear Tennessee Eastman process. The results demonstrate the better fault detection ability of the proposed methodology in terms of lower computational effort and reduced false alarm and missed detection rates. (C) 2011 Curtin University of Technology and John Wiley & Sons, Ltd.
引用
收藏
页码:460 / 469
页数:10
相关论文
共 18 条
[1]   Feature vector selection and projection using kernels [J].
Baudat, G ;
Anouar, F .
NEUROCOMPUTING, 2003, 55 (1-2) :21-38
[2]   Adaptive Kernel Principal Component Analysis (KPCA) for Monitoring Small Disturbances of Nonlinear Processes [J].
Cheng, Chun-Yuan ;
Hsu, Chun-Chin ;
Chen, Mu-Chen .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2010, 49 (05) :2254-2262
[3]   Fault diagnosis in chemical processes using Fisher discriminant analysis, discriminant partial least squares, and principal component analysis [J].
Chiang, LH ;
Russell, EL ;
Braatz, RD .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2000, 50 (02) :243-252
[4]   Improved kernel principal component analysis for fault detection [J].
Cui, Peiling ;
Li, Junhong ;
Wang, Guizeng .
EXPERT SYSTEMS WITH APPLICATIONS, 2008, 34 (02) :1210-1219
[5]   Improved kernel PCA-based monitoring approach for nonlinear processes [J].
Ge, Zhiqiang ;
Yang, Chunjie ;
Song, Zhihuan .
CHEMICAL ENGINEERING SCIENCE, 2009, 64 (09) :2245-2255
[6]   Efficiently updating and tracking the dominant kernel principal components [J].
Hoegaerts, L. ;
De lathauwer, L. ;
Goethals, I. ;
Suykens, J. A. K. ;
Vandewalle, J. ;
De Moor, B. .
NEURAL NETWORKS, 2007, 20 (02) :220-229
[7]   Nonlinear process monitoring using kernel principal component analysis [J].
Lee, JM ;
Yoo, CK ;
Choi, SW ;
Vanrolleghem, PA ;
Lee, IB .
CHEMICAL ENGINEERING SCIENCE, 2004, 59 (01) :223-234
[8]   Improved kernel fisher discriminant analysis for fault diagnosis [J].
Li, Junhong ;
Cui, Peiling .
EXPERT SYSTEMS WITH APPLICATIONS, 2009, 36 (02) :1423-1432
[9]   Non-parametric confidence bounds for process performance monitoring charts [J].
Martin, EB ;
Morris, AJ .
JOURNAL OF PROCESS CONTROL, 1996, 6 (06) :349-358
[10]   Statistical process monitoring and disturbance diagnosis in multivariable continuous processes [J].
Raich, A ;
Cinar, A .
AICHE JOURNAL, 1996, 42 (04) :995-1009