An Improved Causal Disentanglement Single-Source Domain Generalization Method for Bearing Fault Diagnosis
ID:15 Submission ID:14 View Protection:ATTENDEE Updated Time:2024-10-29 13:26:55 Hits:44 Oral Presentation

Start Time:2024-11-01 16:20 (Asia/Shanghai)

Duration:20min

Session:[P1] Parallel Session 1 » [P1-1] Parallel Session 1(November 1 PM)

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Abstract
In the field of domain generalization for fault diagnosis, the majority of approaches concentrate on extracting domain-invariant features from multi-source domains. However, collecting samples from multi-source domains is extremely difficult, and the data typically originate from a single-source domain. To tackle the issue of inadequate generalization capability in unknown target domains when trained on only a single source domain, an improved prototype-guided causal disentanglement domain generalization network (ICDDG) is proposed for mechanical fault diagnosis. This network combines feature mean, similarity, and triplet loss to construct an improved prototype-based triplet loss function, which reduces the influence of outlier samples and achieves more effective prototype learning. The improved triplet loss function effectively guides the causal disentanglement network to separate causal features from non-causal features better, enhancing the model's adaptability and robustness when encountering unseen domains. Diagnostic experiments performed using two bearing datasets substantiate the efficacy of the ICDDG method.
Keywords
causal disentanglement;single-source domain generalization;bearing;fault diagnosis;triplet loss
Speaker
WangHongqi
Ph.D. Student Harbin University of Science and Technology;Heilongjiang Province Key Laboratory of Pattern Recognition and Information Perception

Submission Author
WangHongqi Harbin University of Science and Technology;Heilongjiang Province Key Laboratory of Pattern Recognition and Information Perception
WangYujing Harbin University of Science and Technology;Heilongjiang Province Key Laboratory of Pattern Recognition and Information Perception
KangShouqiang Harbin University of Science and Technology;Heilongjiang Province Key Laboratory of Pattern Recognition and Information Perception
WangQingyan Harbin University of Science and Technology;Heilongjiang Province Key Laboratory of Pattern Recognition and Information Perception
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Important Dates

15th August 2024   31st August 2024- Manuscript Submission

15th September 2024 - Acceptance Notification

1st October 2024 - Camera Ready Submission

1st October 2024  – Early Bird Registration

 

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