Title :
Fault pattern recognition using dynamic independent component based sparse kernel classifier
Author :
Xiaogang, Deng ; Xuemin, Tian
Author_Institution :
Coll. of Inf. & Control Eng., China Univ. of Pet. (East China), Qingdao, China
Abstract :
In order to diagnose fault source effectively, this paper proposed a novel fault pattern recognition method called dynamic independent component based sparse kernel classifier (DICSKC). In the proposed method, fault pattern recognition is viewed as a classification problem and kernel trick is applied to construct nonlinear classifier for each fault scene. To improve classification performance, dynamic independent component analysis is used to extract data features which substitute for original measured variables as the input of classifier. For obtaining a sparse classifier to reduce the computation complexity, an orthogonal forward subset selection procedure is utilized to minimize the leave one out classification error. Simulation on the Tennessee Eastman benchmark process shows that the proposed method has a good fault pattern recognition performance.
Keywords :
failure analysis; fault diagnosis; feature extraction; independent component analysis; pattern classification; production engineering computing; set theory; DICSKC; Tennessee Eastman benchmark process; classification error; classification performance; computation complexity; data feature extraction; dynamic independent component based sparse kernel classifier; fault pattern recognition method; fault scene; nonlinear classifier; orthogonal forward subset selection procedure; sparse classifier; Brain modeling; Data models; Feature extraction; Kernel; Pattern recognition; Support vector machine classification; Training data; dynamic independent component analysis; fault pattern recognition; sparse kernel classifier;
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
Conference_Location :
Hefei
Print_ISBN :
978-1-4673-2581-3