Deep Learning for Rolling Bearing Fault Diagnosis Based on Feature Fusion and Hybrid Enhancement
CSTR:
Author:
Affiliation:

Clc Number:

Fund Project:

  • Article
  • |
  • Figures
  • |
  • Metrics
  • |
  • Reference
  • |
  • Related
  • |
  • Cited by
  • |
  • Materials
  • |
  • Comments
    Abstract:

    Bearing fault diagnosis plays a vital role in maintaining rotating machinery and avoiding major disasters. Given that the existing fault diagnosis model cannot adapt to the changing working loads in actual industrial applications, a fault diagnosis method based on feature fusion and hybrid enhancement is proposed. For this purpose, new feature signals are generated by fusing time-frequency features, working condition features, and time difference features into the original signal. Then, the phase space reconstruction theory is applied to convert the feature signals into image signals, and data distribution is expanded through hybrid enhancement during training. Finally, the residual network is used for fault diagnosis analysis. The experimental results on the Case Western Reserve University (CWRU) dataset show that the prediction accuracy of this method under invariable working conditions is up to 100% and its average prediction accuracy under changing working conditions reaches 93.28%, which indicates that the proposed method has a remarkable domain adaptability.

    Reference
    Related
    Cited by
Get Citation

黄晓玲,周磊,张德平.基于特征融合和混类增强的深度学习滚动轴承故障诊断.计算机系统应用,2022,31(8):345-353

Copy
Share
Article Metrics
  • Abstract:
  • PDF:
  • HTML:
  • Cited by:
History
  • Received:November 12,2021
  • Revised:December 13,2021
  • Adopted:
  • Online: May 30,2022
  • Published:
Article QR Code
You are the firstVisitors
Copyright: Institute of Software, Chinese Academy of Sciences Beijing ICP No. 05046678-3
Address:4# South Fourth Street, Zhongguancun,Haidian, Beijing,Postal Code:100190
Phone:010-62661041 Fax: Email:csa (a) iscas.ac.cn
Technical Support:Beijing Qinyun Technology Development Co., Ltd.

Beijing Public Network Security No. 11040202500063