Title :
Fault monitoring of TE based on improved multiscale principal component analysis
Author :
Li Li ; Qi Yongsheng ; Li Yongting ; Wang Lin ; Gao Xuejin
Author_Institution :
Inst. of Electr. Power, Inner Mongolia Univ. of Technol., Huhhot, China
Abstract :
In order to handle the problem of nonstationary and random nature of data in the process industry, an improved multiscale principal component analysis is proposed, which contains different noises inevitably. Firstly, an improved wavelet threshold denoising method which combines multiple wavelet transform with a new threshold function based on the characteristics of wavelet analysis is proposed. The data collected from the industry condition are processed by means of the improved wavelet threshold denoising method. Using wavelets, the individual variable is decomposed into approximations and details at different scales. Contributions from each scale are collected in separate matrices, and a PCA model is then constructed to extract correlation at each scale. According to the simulation of Tennessee Eastman, and comparing the improved MSPCA with traditional PCA, it shows that the improved MSPCA has enhanced the accuracy of process monitoring.
Keywords :
condition monitoring; fault diagnosis; principal component analysis; production engineering computing; signal denoising; MSPCA; PCA model; TE; Tennessee Eastman; fault monitoring; multiscale principal component analysis; process industry; process monitoring; threshold function; wavelet analysis; wavelet threshold denoising method; wavelet transform; Data models; Monitoring; Noise; Principal component analysis; Wavelet analysis; Wavelet coefficients; MSPCA; process monitoring; wavelet threshold denoising; wavelet transform;
Conference_Titel :
Intelligent Control and Automation (WCICA), 2014 11th World Congress on
DOI :
10.1109/WCICA.2014.7053472