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Prior knowledge-based residuals shrinkage prototype networks for cross-domain fault diagnosis

Hu, Junwei; Li, Weigang*; Zheng, Xiujuan; Tian, Zhiqiang; Zhang, Yong*
Science Citation Index Expanded
y

摘要

In engineering practice, device failure samples are limited in the case of unexpected catastrophic faults, thereby limiting the application of deep learning in fault diagnosis. In this study, we propose a prior knowledge-based residual shrinkage prototype network to resolve the fault diagnosis challenges under limited labeled samples. First, our method combines general supervised learning and metric meta-learning to extract prior knowledge from the labeled source data by utilizing a denoised residual shrinkage network. Further, the knowledge extracted from the supervised learning is used for prototype metric training to achieve a better feature representation for the fault diagnosis. Finally, our approach outperforms a series of baseline methods in the few-shot cross-domain diagnostic task on the gearbox and bearing datasets. A diagnosis accuracy of more than 95% has been achieved in a variety of working conditions for diagnostic tasks, which is far higher than the existing basic method.

关键词

few-shot fault diagnosis prototype network residual shrinkage network prior knowledge