Volume 101, Issue 4 pp. 1943-1952
RESEARCH ARTICLE

A novel imbalanced fault diagnosis method integrated KLFDA with improved cost-sensitive learning ANBSVM

Xue Jiang

Xue Jiang

College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China

Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing, China

Department of Chemical and Biomolecular Engineering, National University of Singapore, Singapore, Singapore

Contribution: Data curation, Formal analysis, Methodology, Project administration, Software, Validation, Writing - original draft, Writing - review & editing

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Yuan Xu

Corresponding Author

Yuan Xu

College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China

Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing, China

Correspondence

Yuan Xu, College of Information Science & Technology, Beijing University of Chemical Technology, Beijing 100029, China; Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing 100029, China.

Email: [email protected]

Contribution: Funding acquisition, Methodology, Project administration, Resources, Supervision, Validation, Writing - original draft, Writing - review & editing

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Wei Ke

Wei Ke

School of Applied Sciences, Macao Polytechnic Institute, Macao SAR, China

Contribution: Data curation, Validation

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Yang Zhang

Yang Zhang

College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China

Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing, China

Contribution: Funding acquisition, Software

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Qunxiong Zhu

Qunxiong Zhu

College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China

Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing, China

Contribution: Funding acquisition, Supervision

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Yanlin He

Yanlin He

College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China

Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing, China

Contribution: Data curation, Formal analysis

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First published: 13 August 2022
Citations: 1

Funding information: China Scholarship Council, Grant/Award Number: 202006880028; Fundamental Research Funds for the Central Universities; National Natural Science Foundation of China, Grant/Award Numbers: 62073022, 61973022; National Key R & D Program of China, Grant/Award Number: 2019YFB2102600

Abstract

Fault diagnosis, as an important approach to ensure the safety and stability of industrial processes, has been widely studied in recent years. During the running process, it is noted that the normal data are always much more than the fault data, which demonstrates imbalanced characteristics and leads to a negative effect on the overall accuracy of fault diagnosis. Targeting the problem, a novel imbalanced fault diagnosis method integrated kernel local Fisher discriminant analysis (KLFDA) with improved adaptive near-Bayesian support vector machine (ANBSVM) is proposed in this paper. First, KLFDA is used to extract the non-linear features while maintaining the local spatial structure of the data by introducing flow pattern learning. Second, considering the imbalance characteristics of the data, the data set is divided into a majority class (normal data) and a minority class (fault data). The density distributions of the two classes in their overlapping region are characterized by the proportional function of variance. Third, by minimizing the Bayesian error under the proportion function, the weight factors are adaptively obtained and then introduced into the objective function of the support vector machine (SVM). Namely, a cost sensitivity-based ANBSVM classifier for fault diagnosis is constructed. Finally, by the simulation experiment on the Tennessee Eastman (TE) process, the comparison results show that the proposed ANBSVM-based fault diagnosis method makes progress in the performance of fault diagnosis with higher diagnostic accuracy and F1 score.

DATA AVAILABILITY STATEMENT

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