DocumentCode :
620477
Title :
Nonlinear process monitoring using dynamic kernel slow feature analysis and support vector data description
Author :
Deng Xiaogang ; Tian Xuemin
Author_Institution :
Coll. of Inf. & Control Eng., China Univ. of Pet., Qingdao, China
fYear :
2013
fDate :
25-27 May 2013
Firstpage :
4291
Lastpage :
4296
Abstract :
For effective fault detection in nonlinear process, this paper proposed a novel nonlinear monitoring method based on dynamic kernel slow feature analysis and support vector data description (DKSFA-SVDD). SFA is a newly emerged data feature extraction technique which can find invariant features of temporally varying signals. For effective analysis on nonlinear dynamic process data, DKSFA is built which uses kernel trick to mine the nonlinear data feature and applies an augmented matrix to extract the dynamic information in measured data. In order to monitor the dynamic nonlinear data features from DKSFA, SVDD is applied to describe the distribution region of normal operation data and one monitoring index is constructed to indicate the occurrence of the abnormal event. Simulation using a continuous stirred tank reactor (CSTR) system shows that the proposed method has a good fault detection performance and outperforms the traditional KPCA method.
Keywords :
chemical reactors; data description; data mining; fault diagnosis; feature extraction; matrix algebra; nonlinear dynamical systems; process monitoring; production engineering computing; signal processing; support vector machines; CSTR system; DKSFA-SVDD; KPCA method; SFA; augmented matrix; continuous stirred tank reactor system; dynamic information; dynamic kernel slow feature analysis; dynamic nonlinear data features; fault detection; fault detection performance; feature extraction technique; nonlinear data feature mining; nonlinear process monitoring method; normal operation data distribution region; support vector data description; temporally varying signals; Chemical reactors; Covariance matrices; Fault detection; Feature extraction; Indexes; Kernel; Monitoring; Dynamic kernel slow feature analysis; Fault detection; Invariant learning; Support vector data description;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Decision Conference (CCDC), 2013 25th Chinese
Conference_Location :
Guiyang
Print_ISBN :
978-1-4673-5533-9
Type :
conf
DOI :
10.1109/CCDC.2013.6561706
Filename :
6561706
Link To Document :
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