DocumentCode :
481495
Title :
Improved MSPCA with application to process monitoring
Author :
Zhang, Haifeng ; Wang, Yuesheng
Author_Institution :
College of Automation, Hangzhou University of Electronic Science and Technology, Zhejiang 310018,China
fYear :
2006
fDate :
6-7 Nov. 2006
Firstpage :
2257
Lastpage :
2261
Abstract :
This paper proposes a improved Multi-scale Principal Component Analysis (MSPCA). A key problem of fault detection in process monitoring lies in how to enhance the accuracy of fault detection to reduce detection costs. In this point, MSPCA has improved to a great degree, but it can be improved in the accuracy of selecting the coefficients of wavelet used in reconstructing. Because the accuracy of selecting the coefficients of wavelet is directly concerned with the accuracy of fault detection in using Principal Component Analysis (PCA) reconstructed. When selecting the coefficients of wavelet based on selecting the coefficients of wavelet in using MSPCA, The improved MSPCA should be proposed to detect the fault in process monitoring. It utilizes Principal-component-related Variable Residuals (PVR) statistic and Common Variable Residuals (CVR) statistic at different scales to replace the statistic Q and combine them with the statistic T2 to select the coefficients of wavelet. According to the analysis of simulation of algorithm’s example, and comparing the improved MSPCA with MSPCA and conventional PCA, it shows that the improved MSPCA has enhanced the accuracy of fault detection in process monitoring.
Keywords :
Principle component analysis; multi-scale PCA; multiresolution analysis; process monitoring;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Technology and Innovation Conference, 2006. ITIC 2006. International
Conference_Location :
Hangzhou
ISSN :
0537-9989
Print_ISBN :
0-86341-696-9
Type :
conf
Filename :
4752389
Link To Document :
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