73 / 2021-07-20 14:39:35
A fault diagnosis method for mechanical rotating components based on automatic learning of pseudo labels
终稿
Shuangyan Yin / Harbin Institute of Technology
Jingli Yang / Harbin Institute of Technology
Cheng Yang / China Institute of Marine Technology and Economy
To address the problem that existing fully supervised learning methods cannot utilize massive unlabeled samples and semi-supervised learning methods are still inadequate in terms of the accuracy of fault diagnosis models, this paper proposes a quasi-fully supervised fault diagnosis method based on Automatic Learning of Pseudo Labels (PLAL). First, Self-normalizing Convolutional Adversarial Autoencoder (SCAAE) is designed to obtain deep representation feature sets with labeled and unlabeled samples in unsupervised learning mode. Then, Constrained Seed K-means (CSKM) algorithm is introduced into SCAAE to achieve optimization of depth representation features and improve the pseudo-labeling tagging accuracy of unlabeled samples. Finally, the original labeled samples and the tagged pseudo-labeled samples are exploited to train the fault diagnosis model to yield the final classification results. Experimental results show that the PLAL fault diagnosis algorithm can fully utilize unlabeled samples to achieve the goal of improving the fault diagnosis accuracy of mechanical rotating components.
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

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Southeast University, China
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