4.7 Article

Modified canonical variate analysis based on dynamic kernel decomposition for dynamic nonlinear process quality monitoring

Journal

ISA TRANSACTIONS
Volume 108, Issue -, Pages 106-120

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.isatra.2020.08.017

Keywords

Process monitoring; Canonical variate analysis; Dynamic kernel decomposition; Singular value decomposition; Tennessee Eastman process; Hot strip mill process

Funding

  1. National Natural Science Foundation of China [61703434]

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This study proposes a modified canonical variate analysis approach based on dynamic kernel decomposition for dynamic nonlinear process quality monitoring. It establishes a partial-correlation nonlinear model between input dynamic kernel latent variables and output variables to maximize feature information extraction and ensure monitor abnormal operation.
It is crucial to adopt an efficient process monitoring technique that ensures process operation safety and improves product quality. Toward this endeavor, a modified canonical variate analysis based on dynamic kernel decomposition (DKDCVA) approach is proposed for dynamic nonlinear process quality monitoring. Different from traditional canonical variate analysis and its expansive kernel methods, the chief intention of the our proposed method is to establish a partial-correlation nonlinear model between input dynamic kernel latent variables and output variables, and ensures the extracted feature information can be maximized. More specifically, the dynamic nonlinear model is orthogonally decomposed to obtain quality-related and independent subspace by singular value decomposition. From the perspective of quality monitoring, Hankel matrices of past and future vectors of quality-related subspace are derived in detail, and corresponding statistical metrics are constructed. Furthermore, given the existence of non-Gaussian process variables, kernel density estimation evaluates the upper control limit instead of traditional control limits. Finally, the experimental results conducted on a simple numerical example, the Tennessee Eastman process and the hot strip mill process indicate that the DKDCVA approach can be preferable to monitor abnormal operation for the dynamic nonlinear process. (c) 2020 ISA. Published by Elsevier Ltd. All rights reserved.

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