74 / 2021-07-20 16:57:52
Robust Supervised Contrastive Learning for Fault Diagnosis Under Different Noises and Conditions
终稿
Chenye Hu / Xi'an Jiaotong University
Jingyao Wu / Xi'an Jiaotong University
Chuang Sun / Xi'an Jiaotong University
如强 严 / 西安交通大学
Xuefeng Chen / Xi'an Jiaotong University
Fault diagnosis is of vital importance to maintain safety and reliability of mechanical equipment. Intelligent diagnostic methods have achieved high performance in recent researches. However, in industrial application, machines will suffer complex noises and the operating condition is varying as well, which leads to domain shift and performance degradation. As a promising alternative to supervised learning, self-supervised contrastive learning follows a contrastive paradigm to extract robust feature representation. Nevertheless, the training stage of self-supervised learning suffers from the lack of label information, thus its classification accuracy is inferior to supervised approaches. To address this problem, a supervised contrastive learning method, which incorporates the merits of supervised learning and self-supervised learning, is proposed for fault diagnosis. First, dataset is splitted and two views are generated from each original sample via four data augmentation strategies. Then label information is integrated with contrastive loss function by treating views of the same class as positive pairs. Eventually, generalized Gaussian distribution is adopted to develop the noise model. Experiments of multi-noise as well as multi-working condition are implemented. Experimental results demonstrate that the proposed method outperforms other supervised and self-supervised approaches in fault diagnosis of aero-engine bevel gear.
重要日期
  • 会议日期

    10月21日

    2021

    10月23日

    2021

  • 10月26日 2021

    注册截止日期

主办单位
Southeast University, China
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