A Reliability Confidence Transfer Learning Framework for Cross-Domain Motor Diagnosis with Noisy Labels
ID:147 View Protection:ATTENDEE Updated Time:2025-11-10 16:06:02 Hits:110 Poster Presentation

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Abstract
Existing deep transfer learning methods assume that all labeled samples are correctly annotated. However, owing to factors such as human mistakes, measurement deviations, data transmission faults, and storage inaccuracies, it is unrealistic to accurately label all fault samples in actual industrial production. To solve this issue, a reliability confidence transfer learning framework (RCTLF) is proposed for crossdomain intelligent fault diagnosis (IFD) of electric motors in this study. Specifically, a reliability-aware evaluation mechanism is adopted to evaluate the reliability of each source sample. Meanwhile, a confidence estimation mechanism is utilized to assess the confidence level of each fault sample from the source and target domains. At last, a novel loss function is designed to train the constructed diagnostic model. To showcase the effectiveness of the proposed RCTLF in practical diagnostic scenarios, we conducted experiments on two electric motor datasets for IFD with noisy labels. The effectiveness of the proposed RCTLF is highlighted by comparisons with current advanced methods. The experiments confirm that it can still achieve satisfactory results, even when 80% of the source domain data is mislabeled.
Keywords
Electric Motor,Transfer Learning,Noisy Label,fault diagnosis
Speaker
Ke Yue
Student South China University of Technology

Submission Author
Jipu Li South China University of Technology
Ke Yue South China University of Technology
Fei Jiang Dongguan University of Technology
Shaohui Zhang Dongguan University of Technology
Weihua Li South China University of Technology
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Important Date
  • Conference Date

    Nov 21

    2025

    to

    Nov 23

    2025

  • Oct 20 2025

    Draft paper submission deadline

  • Dec 08 2025

    Registration deadline

Sponsored By
IEEE Instrumentation and Measurement Society
South China University of Technology
Organized By
South China University of Technology