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Multivariate time delay analysis based local KPCA fault prognosis approach for nonlinear processes 被引量:5

Multivariate time delay analysis based local KPCA fault prognosis approach for nonlinear processes
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摘要 Currently, some fault prognosis technology occasionally has relatively unsatisfied performance especially for in- cipient faults in nonlinear processes duo to their large time delay and complex internal connection. To overcome this deficiency, multivariate time delay analysis is incorporated into the high sensitive local kernel principal component analysis. In this approach, mutual information estimation and Bayesian information criterion (BIC) are separately used to acquire the correlation degree and time delay of the process variables. Moreover, in order to achieve prediction, time series prediction by back propagation (BP) network is applied whose input is multivar- iate correlated time series other than the original time series. Then the multivariate time delayed series and future values obtained by time series prediction are combined to construct the input of local kernel principal component analysis (LKPCA) model for incipient fault prognosis. The new method has been exemplified in a sim- ple nonlinear process and the complicated Tennessee Eastman (TE) benchmark process. The results indicate that the new method has suoerioritv in the fault prognosis sensitivity over other traditional fault prognosis methods. Currently,some fault prognosis technology occasionally has relatively unsatisfied performance especially for incipient faults in nonlinear processes duo to their large time delay and complex internal connection.To overcome this deficiency,multivariate time delay analysis is incorporated into the high sensitive local kernel principal component analysis.In this approach,mutual information estimation and Bayesian information criterion(BIC) are separately used to acquire the correlation degree and time delay of the process variables.Moreover,in order to achieve prediction,time series prediction by back propagation(BP) network is applied whose input is multivariate correlated time series other than the original time series.Then the multivariate time delayed series and future values obtained by time series prediction are combined to construct the input of local kernel principal component analysis(LKPCA) model for incipient fault prognosis.The new method has been exemplified in a simple nonlinear process and the complicated Tennessee Eastman(TE) benchmark process.The results indicate that the new method has superiority in the fault prognosis sensitivity over other traditional fault prognosis methods.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2016年第10期1413-1422,共10页 中国化学工程学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61573051,61472021) the Natural Science Foundation of Beijing(4142039) Open Fund of the State Key Laboratory of Software Development Environment(SKLSDE-2015KF-01) Fundamental Research Funds for the Central Universities(PT1613-05)
关键词 Fault prognosis Time delay estimation Local kernel principal component analysis 差错预后;时间延期评价;本地核主管部件分析
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