DocumentCode :
724446
Title :
Multimode process monitoring using prototype-based Gaussian mixture model
Author :
Zhibo Xiao ; Ma Yao ; Huangang Wang
Author_Institution :
Dept. of Autom., Tsinghua Univ., Beijing, China
fYear :
2015
fDate :
23-25 May 2015
Firstpage :
4552
Lastpage :
4557
Abstract :
Modern industrial processes often have multiple operating modes because of their complexity and manufacturing strategy changes. Meanwhile, the within-mode process data can also be nonlinear and non-Gaussian distributed. To deal with the problems above, Gaussian mixture model (GMM) has recently been applied to multimode process monitoring which achieves better performance than traditional multivariate statistical process monitoring techniques. However, the training of GMM usually depends on expectation-maximization (EM) algorithm, which is sensitive to initial values and requires a priori the number of components. To alleviate these problems above, this paper proposes a new algorithm to train GMM based on prototype selection, named prototype-based GMM (PGMM), and applies it to multimode process monitoring. The algorithm can determine the number of Gaussian components adaptively and is highly efficient and stable. The parameters in the algorithm need not to be specially tuned because of their clear statistical meanings. Through experiments of a numeric example and the TE benchmark problem, the effectiveness of the proposed method is demonstrated.
Keywords :
Gaussian processes; chemical industry; expectation-maximisation algorithm; mixture models; process monitoring; statistical analysis; EM algorithm; Gaussian components; PGMM; TE benchmark problem; Tennessee Eastman process; expectation-maximization algorithm; industrial processes; multimode process monitoring; multivariate statistical process monitoring technique; nonGaussian distributed within-mode process data; nonlinear within-mode process data; prototype selection; prototype-based GMM; prototype-based Gaussian mixture model; Algorithm design and analysis; Monitoring; Principal component analysis; Process control; Prototypes; Training; Training data; Data Set Condensation; Gaussian Mixture Model; Multimode Process Monitoring; Prototype Selection;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Decision Conference (CCDC), 2015 27th Chinese
Conference_Location :
Qingdao
Print_ISBN :
978-1-4799-7016-2
Type :
conf
DOI :
10.1109/CCDC.2015.7162727
Filename :
7162727
Link To Document :
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