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A fault diagnosis method for compler chemical process based on multi-model fusion

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Deep learning methods have become the mainstream research direction in the field of chemical process fault detection and diagnosis, which have great application and research value. However, the existing deep fault diagnosis methods are faced with challenges such as missing data, high-dimensional redundancy and difficulty in fault feature mining, which limits their application in industry. Based on this, a fault diagnosis method for complex chemical process based on multi-model fusion is proposed. This approach avoids over-fitting the model due to excessive redundant data by introducing a FunkSVD matrix decomposition model to augment the missing data without changing the data distribution and then inputting an extreme gradient boosting tree model to learn key features. Finally, the model memory and generalization capability are improved by training a very deep factor decomposer diagnostic model to extract and fuse linear, low-order interaction and high-order interaction features in an all-round way to adaptively establish the correlation between fault features and fault conditions. To validate the model effectiveness, extensive experiments were conducted on the Tennessee Eastman Process dataset and Fluidized Catalytic Cracker fractionation unit dataset, and the results showed that the proposed method has significant performance advantages over existing diagnostic methods in terms of precision and recall metrics.

Deep learningChemical processFault detection and diagnosisMulti-model fusionFeature extraction

YANG Zhe、WANG Dong、HE Yadong

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Sinopec Research Institute of Safety Engineering Company Limited, State Key Laboratory of safety control for chemicals, Qingdao 266000, Shandong, China

Sinopec Integrated Management Department, Beijing 100728, China

2022

Chemical Engineering Research & Design

Chemical Engineering Research & Design

SCI
ISSN:0263-8762
年,卷(期):2022.184
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