A Domain Generalization Network with Discriminant Domain-Common Features for Fault Diagnosis Under Unseen Working Conditions
ID:129 Submission ID:56 View Protection:ATTENDEE Updated Time:2024-10-23 10:02:34 Hits:28 Poster Presentation

Start Time:Pending (Asia/Shanghai)

Duration:Pending

Session:[No Session] » [No Session Block]

Presentation File

Tips: The file permissions under this presentation are only for participants. You have not logged in yet and cannot view it temporarily.

Abstract
Transfer learning effectively addresses the issue of distributional mismatches between training and testing data in cross-domain fault diagnosis. However, traditional domain adaptation methods heavily rely on testing data during training, which limit their applicability in real industrial scenarios, particularly when obtaining fault samples from the target domain is challenging. To address this challenge, this paper proposes a domain generalization network with discriminant domain-common features for fault diagnosis under unseen working conditions. The core idea is to extract fault features from multiple source domains using a convolutional encoder, leveraging the local maximum mean discrepancy loss and orthogonal loss to separately capture domain-common and domain-specific features. Simultaneously, the Hilbert-Schmidt independence criterion is employed to reduce redundancy among these features. Furthermore, a convolutional decoder is introduced to ensure the integrity of information across multiple source domains through feature reconstruction. Experimental results demonstrate that our method excels on the Paderborn University bearing dataset and achieves superior results across a range of generalization tasks.
Keywords
Domain common representation,Domain generalization,Fault diagnosis,Transfer learning
Speaker
PanDonghui
Doctor Anhui University

HaoXiaobo
Master Anhui University

Submission Author
HaoXiaobo Anhui University
PanDonghui Anhui University
LiuYongbin Anhui University
Comment submit
Verification code Change another
All comments

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

 

Contact Us

Website:

https://icsmd2024.aconf.org/

Email:
icsmd2024@163.com