217 / 2025-06-14 20:57:33
A Fault Diagnosis Method Based on Unsupervised Dynamic Domain Adaptation for Rolling Bearings
unsupervised domain adaptation (UDA),rolling bearings,dynamic factor,fault diagnosis
终稿
Ran Ren / Kunming University of Science and Technology; Faculty of Mechanical and Electrical Engineering
Tao Liu / Kunming University of Science and Technology;Faculty of Mechanical and Electrical Engineering
Zhenya Wang / Kunming University of Science and Technology;Faculty of Mechanical and Electrical Engineering
Jiabing Gu / Kunming University of Science and Technology;Faculty of Mechanical and Electrical Engineering
Existing unsupervised learning-based methods rely heavily on lots of test bed collection data when constructing source domains, and it is difficult to effectively optimize the alignment of marginal and conditional distributions between domains. This study constructs an unsupervised dynamic domain adaptive network (UDDAN) using simulation data as the source domain. A loss function dynamic adjustment mechanism with an adaptive factor is designed to flexibly balance contribution weights of two distribution alignment in the optimization objective according to the model training state. A simulation-generated bearing fault dataset with complete fault information and sufficient labels is used to establish the source domain, which significantly reduces the consumption of experimental resources. The results show that UDDAN can effectively match the deep feature distributions of simulated and experimental data, thereby improving the accuracy of unsupervised cross-domain fault diagnosis.
重要日期
  • 会议日期

    08月01日

    2025

    08月04日

    2025

  • 07月04日 2025

    初稿截稿日期

主办单位
中国机械工程学会设备智能运维分会
承办单位
新疆大学
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