Unsupervised domain adaptation bearing fault diagnosis method based on joint feature alignment
Feng Xiaoliang,
Zhang Zhiwei,
Zhao Aiming
Abstract:In this paper, the issue of cross-condition fault diagnosis of bearing is studied. During actual operation, the conditions of bearing vary due to changes in factors such as rotation speed and load, and the data distribution between different working conditions varies. Deep learning models that perform well in one condition are not ideal when applied to another condition directly. To address this problem, a novel unsupervised domain adaptation fault diagnosis method based on joint feature alignment is proposed … Show more
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