Publication | Open Access
A Bearing Fault Diagnosis Method Using Multi-Branch Deep Neural Network
36
Citations
34
References
2021
Year
Fault DiagnosisDeep Neural NetworksImage AnalysisMachine LearningEngineeringIntelligent DiagnosticsPattern RecognitionDiagnosisStructural Health MonitoringFeature ExtractionBetter Feature ExtractionFault ForecastingDeep LearningFault DetectionAutomatic Fault Detection
Feature extraction from a signal is the most important step in signal-based fault diagnosis. Deep learning or deep neural network (DNN) is an effective method to extract features from signals. In this paper, a novel vibration signal-based bearing fault diagnosis method using DNN is proposed. First, the measured vibration signals are transformed into a new data form called multiple-domain image-representation. By this transformation, the task of signal-based fault diagnosis is transferred into the task of image classification. After that, a DNN with a multi-branch structure is proposed to handle the multiple-domain image representation data. The multi-branch structure of the proposed DNN helps to extract features in multiple domains simultaneously, and to lead to better feature extraction. Better feature extraction leads to a better performance of fault diagnosis. The effectiveness of the proposed method was verified via the experiments conducted with actual bearing fault signals and its comparisons with well-established published methods.
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