TY - CONF
T1 - A new fault detection and diagnosis method based on principal component analysis in multivariate continuous processes
AU - Yang, Yinghua
AU - Lu, Ningyun
AU - Wang, Fuli
AU - Ma, Liling
PY - 2002
Y1 - 2002
N2 - The fault detection and diagnosis methods based on principal component analysis (PCA) have been developed widely because they need no detailed information about process mechanism model and really can detect fault promptly. However the existed diagnosis algorithms such as expert system or contribution plot etc. still have some troubles when applied in real industrial processes, which leads to more extensive research on this topic. In this paper, the proposed diagnosis method utilizes on-line loading plot and cluster analysis to give accurate cause for abnormal process condition, which is grounded on the fact that faults normally change the correlation of process variables which may indicate more direct information about the failure cause. Thus, the principal components score plot and square predicted error (SPE) plot are used to detect process abnormal operation condition, the loading plot and cluster analysis are used to diagnose the faults. The method is also applied to monitor the fractional distillation process of liquefied gases. The result shows that accurate conclusion could be obtained easily by this method.
AB - The fault detection and diagnosis methods based on principal component analysis (PCA) have been developed widely because they need no detailed information about process mechanism model and really can detect fault promptly. However the existed diagnosis algorithms such as expert system or contribution plot etc. still have some troubles when applied in real industrial processes, which leads to more extensive research on this topic. In this paper, the proposed diagnosis method utilizes on-line loading plot and cluster analysis to give accurate cause for abnormal process condition, which is grounded on the fact that faults normally change the correlation of process variables which may indicate more direct information about the failure cause. Thus, the principal components score plot and square predicted error (SPE) plot are used to detect process abnormal operation condition, the loading plot and cluster analysis are used to diagnose the faults. The method is also applied to monitor the fractional distillation process of liquefied gases. The result shows that accurate conclusion could be obtained easily by this method.
KW - Clustering analysis
KW - Fault detection and diagnosis
KW - Principal component analysis
KW - Statistical process control chart
UR - http://www.scopus.com/inward/record.url?scp=0036946417&partnerID=8YFLogxK
M3 - Paper
AN - SCOPUS:0036946417
SP - 3156
EP - 3160
T2 - Proceedings of the 4th World Congress on Intelligent Control and Automation
Y2 - 10 June 2002 through 14 June 2002
ER -