A Cross-Source Domain Contrastive Learning-guided Invariant Adversarial Network for Mechanical Fault Diagnosis Under Unseen Conditions
ID:44 View Protection:ATTENDEE Updated Time:2025-11-10 11:21:57 Hits:153 Oral Presentation

Start Time:2025-11-22 14:40(Asia/Shanghai)

Duration:20min

Session:S4 Parallel Session 4 » S4-1Parallel Session 4-22 PM

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Abstract
Although domain adaptation methods are commonly used in mechanical fault diagnosis to mitigate the domain shift problem, they typically rely on target domain data being available during training. To address this issue, this paper proposes a cross-source domain contrastive learning-guided invariant adversarial network (CSDCL-IAN). The model first employs a residual attention network to construct a feature extractor, aiming to enhance discriminative fault information. Subsequently, a cross-source domain contrastive learning mechanism is designed, which extracts common features across multi-source domains by making intra-class features closer and inter-class features more distinct. Finally, unseen-condition data are input into the trained CSDCL-IAN to realize cross-domain fault diagnosis. In transfer diagnosis experiments on a planetary transmission system test rig, CSDCL-IAN yields an average diagnostic accuracy of 98.15% on across six transfer tasks, which significantly verifies its superior domain generalization ability and cross-domain diagnostic performance.
Keywords
contrastive learning,fault diagnostics,domain generalization,varying conditions
Speaker
Jie Zhang
PhD student Beijing Institute of Technology

Submission Author
Jie Zhang Beijing Institute of Technology
Kangkang Zhao Beijing Institute of Technology
Yufan Lv Beijing Institute of Technology
Leijun Shi Beijing Institute of Technology
Yun Kong Beijing Institute 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