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Semisupervised Graph Convolution Deep Belief Network for Fault Diagnosis of Electormechanical System With Limited Labeled Data

Xiaoli Zhao, Minping Jia, Zheng Liu

2020IEEE Transactions on Industrial Informatics172 citationsDOI

Abstract

The labeled monitoring data collected from the electromechanical system is limited in the real industries; traditional intelligent fault diagnosis methods cannot achieve satisfactory accurate diagnosis results. To deal with this problem, an intelligent fault diagnosis method for electromechanical system based on a new semisupervised graph convolution deep belief network algorithm is proposed in this article. Specifically, the labeled and unlabeled samples are first employed to design a new adaptive local graph learning method for constructing the graph neighbor relationship. Meanwhile, the labeled samples are applied to describe the discriminative structure information of data via the latest circle loss. Finally, the local and discriminative objective functions are reconstructed under the semisupervised learning framework. The experimental results from the motor-bearing system demonstrate that the method can achieve 98.66 % accuracy with only 10 % of training labeled data, which indicates that it is a promising semisupervised intelligent fault diagnosis method.

Topics & Concepts

Discriminative modelGraphArtificial intelligenceComputer scienceConvolution (computer science)Fault (geology)Pattern recognition (psychology)Machine learningGraph theoryData miningMathematicsArtificial neural networkTheoretical computer scienceGeologyCombinatoricsSeismologyMachine Fault Diagnosis TechniquesMachine Learning in BioinformaticsEngineering Diagnostics and Reliability
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