TY - JOUR
T1 - Decentralized dynamic monitoring based on multi-block reorganized subspace integrated with Bayesian inference for plant-wide process
AU - Zhang, Ming Qing
AU - Jiang, Xue
AU - Xu, Yuan
AU - Luo, Xiong Lin
N1 - Publisher Copyright:
© 2019 Elsevier B.V.
PY - 2019/10/15
Y1 - 2019/10/15
N2 - Multi-block subspace monitoring technology has been widely used in the field of plant-wide process to solve the problem of high complexity between variables. However, recent multi-block partition approaches neither consider variable distribution nor comprehensively analyze quality-relevant fault. To solve this problem, a plant-wide process quality monitoring approach based on multi-block reorganized subspace integrated with Bayesian inference (MBRS-BI) is put forward in this paper. Firstly, in view of the distribution characteristics of data, process variables are divided into Gaussian and non-Gaussian subspaces by Jarque-Bera detection method. Subsequently, in the two subspaces, mutual information (MI) is further employed to determine quality-relevant and quality-irrelevant variables so as to obtain quality-relevant and quality-irrelevant sub-blocks. Dynamic principle component analysis (DPCA) and dynamic independent component analysis (DICA) methods are adopted to monitor Gaussian quality-irrelevant and non-Gaussian quality-irrelevant blocks, respectively. For the monitoring of Gaussian quality-relevant and non-Gaussian quality-relevant blocks, we propose total dynamic principle component regression (TDPCR) and total dynamic independent component regression methods (TDICR) methods to focus on analyzing the impact of faults on output quality. Finally, in order to further achieve plant-wide process dynamic monitoring, all corresponding statistical metrics of sub-blocks are reorganized through Bayesian inference (BI). The proposed method (MBRS-BI) is elaborated by the Tennessee-Eastman (TE) process.
AB - Multi-block subspace monitoring technology has been widely used in the field of plant-wide process to solve the problem of high complexity between variables. However, recent multi-block partition approaches neither consider variable distribution nor comprehensively analyze quality-relevant fault. To solve this problem, a plant-wide process quality monitoring approach based on multi-block reorganized subspace integrated with Bayesian inference (MBRS-BI) is put forward in this paper. Firstly, in view of the distribution characteristics of data, process variables are divided into Gaussian and non-Gaussian subspaces by Jarque-Bera detection method. Subsequently, in the two subspaces, mutual information (MI) is further employed to determine quality-relevant and quality-irrelevant variables so as to obtain quality-relevant and quality-irrelevant sub-blocks. Dynamic principle component analysis (DPCA) and dynamic independent component analysis (DICA) methods are adopted to monitor Gaussian quality-irrelevant and non-Gaussian quality-irrelevant blocks, respectively. For the monitoring of Gaussian quality-relevant and non-Gaussian quality-relevant blocks, we propose total dynamic principle component regression (TDPCR) and total dynamic independent component regression methods (TDICR) methods to focus on analyzing the impact of faults on output quality. Finally, in order to further achieve plant-wide process dynamic monitoring, all corresponding statistical metrics of sub-blocks are reorganized through Bayesian inference (BI). The proposed method (MBRS-BI) is elaborated by the Tennessee-Eastman (TE) process.
KW - Jarque-Bera (J-B)
KW - Multi-block reorganized subspace (MBRS)
KW - Mutual information (MI)
KW - Plant-wide process dynamic monitoring
KW - Total dynamic independent component regression (TDICR)
KW - Total dynamic principal component regression (TDPCR)
UR - http://www.scopus.com/inward/record.url?scp=85071748102&partnerID=8YFLogxK
U2 - 10.1016/j.chemolab.2019.103832
DO - 10.1016/j.chemolab.2019.103832
M3 - Article
AN - SCOPUS:85071748102
SN - 0169-7439
VL - 193
JO - Chemometrics and Intelligent Laboratory Systems
JF - Chemometrics and Intelligent Laboratory Systems
M1 - 103832
ER -