Motor Fault Diagnosis Using Attention-Based Multisensor Feature Fusion

In order to reduce the influence of environmental noise and different operating conditions on the accuracy of motor fault diagnosis, this paper proposes a capsule network method combining multi-channel signals and the efficient channel attention (ECA) mechanism, sampling the data from multiple senso...

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Veröffentlicht in:Energies (Basel) 2024-08, Vol.17 (16), p.4053
Hauptverfasser: Miao, Zhuoyao, Feng, Wenshan, Long, Zhuo, Wu, Gongping, Deng, Le, Zhou, Xuan, Xie, Liwei
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Sprache:eng
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Zusammenfassung:In order to reduce the influence of environmental noise and different operating conditions on the accuracy of motor fault diagnosis, this paper proposes a capsule network method combining multi-channel signals and the efficient channel attention (ECA) mechanism, sampling the data from multiple sensors and visualizing the one-dimensional time-frequency domain as a two-dimensional symmetric dot pattern (SDP) image, then fusing the multi-channel image data and extracting the image using a capsule network combining the ECA attention mechanism features to match eight different fault types for fault classification. In order to guarantee the universality of the suggested model, data from Case Western Reserve University (CWRU) is used for validation. The suggested multi-channel signal fusion ECA attention capsule network (MSF-ECA-CapsNet) model fault identification accuracy may reach 99.21%, according to the experimental findings, which is higher than the traditional method. Meanwhile, the method of multi-sensor data fusion and the use of the ECA attention mechanism make the diagnosis accuracy much higher.
ISSN:1996-1073
1996-1073
DOI:10.3390/en17164053