210 / 2023-10-27 22:47:01
Electric Motor Bearing Fault Noise Detection with Mel-Transformer Model and Multi-Timescale Feature Extraction
electric motor,bearing,Artificial Intelligence,feature extraction
终稿
Xiaotian Zhang / UoY
Yunshu Liu / The Chinese University of Hong Kong
Chao Gong / Northwestern Polytechnical University
Yu Nie / University of york
Jose Rodriguez / Universidad Andres Bello
Bearings are often found in various industrial systems such as electric motors, and their failure often results in industrial losses and personal danger. This paper proposes a transformer-based method to classify the bearing noise signal efficiently and accurately. Firstly, the vibration noise sample signals are used to be extract the fault feature information by multi-timescale Mel-spectrograms. Secondly, this paper proposes Mel-transformer architecture which is the first to apply the vision Transformer-based algorithm model to fault detection task. This method has a powerful ability to automatically extract audio feature information from the Mel-spectrogram feature map and can distinguish various fault types effectively. Compared with convolutional neural network (CNN) based model, the proposed method is more suitable for processing large-scale bearing data in the industry and requires lower computing resources. It also overcomes the problem that the model cannot be processed in parallel on the vibration sequence due to the limitation of the RNN structure. The effectiveness and feasibility of the proposed method are verified by CWRU dataset.
重要日期
  • 会议日期

    12月08日

    2023

    12月10日

    2023

  • 11月01日 2023

    初稿截稿日期

  • 12月10日 2023

    注册截止日期

主办单位
IEEE IAS
承办单位
Southwest Jiaotong University (SWJTU)
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