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Online MW-MSPCA data-driven fault diagnosis
作者姓名:HU You qiang  CHAI Yi and LI Peng hua
作者单位:College of Automation , Chongqing University,Chongqing 400044,P.R.China;College of Automation , Chongqing University,Chongqing 400044,P.R.China;College of Automation , Chongqing University,Chongqing 400044,P.R.China
摘    要:To track the non-stationary dynamics of the process which contains time-varying and multi-scale data, an online moving window multi-scale principal component analysis(MW-MSPCA) data-driven-based fault diagnosis method is proposed. In this data-driven diagnosis technique, wavelet threshold denoising is used to solve the conflict between the statistical model deviation and data correlation decreasing. The statistical models are updated by using moving window principal component analysis in various scales. The contribution of individual process variable to the process behavior change is illustrated in a 3-dimensional contribution chart. A quantitative evaluation mechanism is also given to evaluate the diagonising accuracy. The numerical experimental results for 6135D diesel demonstrate that the proposed method can diagnose sensor fault better in terms of false rejection, false alarm and diagnosing accuracy for fault diagnosis upon comparing with conventional multi-scale principal component analysis(MSPCA) and adaptive multi-way principal component analysis(AMPCA) modeling.

关 键 词:data-driven    multi-scale  fault  diagnosis    moving  window  principal  component

Online MW-MSPCA data-driven fault diagnosis
HU You qiang,CHAI Yi and LI Peng hua.Online MW-MSPCA data-driven fault diagnosis[J].Storage & Process,2012(4):100-106.
Authors:HU You qiang  CHAI Yi and LI Peng hua
Institution:College of Automation , Chongqing University,Chongqing 400044,P.R.China;College of Automation , Chongqing University,Chongqing 400044,P.R.China;College of Automation , Chongqing University,Chongqing 400044,P.R.China
Abstract:
Keywords:data-driven  multi-scale fault diagnosis  moving window principal component
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