129 / 2023-09-20 20:14:20
Zero-Shot Compound Fault Diagnosis Based on Weighted Semantic Autoencoder
compound fault diagnosis, semantic autoencoder, weighted superposition, zero-shot learning
终稿
Ziwei Xu / Soochow University
Jun Wang / Soochow University
Chuancang Ding / Soochow University
Xingxing Jiang / Soochow University
Weiguo Huang / Soochow University
Compound fault diagnosis of rolling bearings is always a challenging task because of complex coupling relationship of different single faults. Traditional diagnostic models require available compound fault samples for model training. However, due to the rarity of the bearing compound faults in industrial scenarios, there may be no compound fault data available to train the model. To this end, this paper proposes a new zero-shot compound fault diagnosis model based on weighted semantic autoencoder (WSAE). Specifically, the proposed WSAE considers the amplitude intensities of different single faults when constructing the semantics of compound faults, and establishes a projection matrix that can effectively project the features of the compound fault samples to the corresponding semantics. A pre-judge module is also designed to roughly classify the test samples into seen or unseen class in the beginning of the bearing fault diagnosis, which is trained via the data of bearings with healthy condition, single faults and fake compound faults. The proposed method is verified on a bearing dataset that were acquired from a self-built bearing test bench. The results show that the WSAE model can effectively identify the bearing compound faults and outperforms the state-of-the-art zero-shot learning-based models.
重要日期
  • 会议日期

    11月02日

    2023

    11月04日

    2023

  • 12月15日 2023

    初稿截稿日期

  • 12月20日 2023

    注册截止日期

主办单位
IEEE Instrumentation and Measurement Society
Xidian University
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