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Attention mechanism based multi-scale feature extraction of bearing fault diagnosis

Lei Xue, Ningyun Lu, Chuang Chen, Hu Tianzhen, Jiang Bin

2023Journal of Systems Engineering and Electronics14 citationsDOIOpen Access PDF

Abstract

Effective bearing fault diagnosis is vital for the safe and reliable operation of rotating machinery. In practical applications, bearings often work at various rotational speeds as well as load conditions. Yet, the bearing fault diagnosis under multiple conditions is a new subject, which needs to be further explored. Therefore, a multi-scale deep belief network (DBN) method integrated with attention mechanism is proposed for the purpose of extracting the multi-scale core features from vibration signals, containing four primary steps: preprocessing of multi-scale data, feature extraction, feature fusion, and fault classification. The key novelties include multi-scale feature extraction using multiscale DBN algorithm, and feature fusion using attention mechanism. The benchmark dataset from University of Ottawa is applied to validate the effectiveness as well as advantages of this method. Furthermore, the aforementioned method is compared with four classical fault diagnosis methods reported in the literature, and the comparison results show that our proposed method has higher diagnostic accuracy and better robustness.

Topics & Concepts

PreprocessorFeature extractionComputer scienceRobustness (evolution)Artificial intelligenceData miningPattern recognition (psychology)Deep belief networkBearing (navigation)Feature (linguistics)Fault (geology)Benchmark (surveying)Artificial neural networkPhilosophyGeneLinguisticsGeodesyGeologyBiochemistrySeismologyGeographyChemistryMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisEngineering Diagnostics and Reliability
Attention mechanism based multi-scale feature extraction of bearing fault diagnosis | Litcius