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Common and specific deep feature representation for multimode process monitoring using a novel variable-wise weighted parallel network

Kai Wang, Zhiying Guo, Yalin Wang, Xiaofeng Yuan, Chunhua Yang, Chunhua Yang

2021Engineering Applications of Artificial Intelligence20 citationsDOIOpen Access PDF

Abstract

Multimodal data are common in industrial processes because of switched operating conditions, varying feedstocks and changed product designs and so on. To guarantee process safety and improving process performance, a variable-wise weighted parallel stacked auto-encoder model is proposed for nonlinear multimode process monitoring. Considering the similarity and difference between multiple operating modes with complex process nonlinearities, mode-common and mode-specific deep features are parallelly extracted with the proposed new model. Since each variable distinctly contributes to the mode-common features, variable-wise weights are designed with an optimal transport distance between modes when the mode-common features are learned. Moreover, different from designing a unified monitoring index for all modes, three asymmetric indices are designed to not only trigger an alarm for an anomaly, but also indicate whether the anomaly is caused by mode-common factors, mode-specific factors or others. Thus, the real-time monitoring results, together with some diagnosis information are simultaneously presented. A numerical example and a real industry application are used to validate the monitoring efficacy of the proposed model.

Topics & Concepts

Computer scienceRepresentation (politics)Feature (linguistics)Variable (mathematics)Artificial intelligenceProcess (computing)Pattern recognition (psychology)Data miningAlgorithmPolitical scienceMathematical analysisMathematicsPoliticsPhilosophyLawLinguisticsOperating systemFault Detection and Control SystemsMineral Processing and GrindingMachine Fault Diagnosis Techniques