4.7 Article

Machine fault diagnosis with small sample based on variational information constrained generative adversarial network

Journal

ADVANCED ENGINEERING INFORMATICS
Volume 54, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.aei.2022.101762

Keywords

Fault diagnosis; Generative adversarial network; Rolling bearing; Variational information constraint; Small sample

Funding

  1. National Natural Science Founda- tion of China
  2. Major research plan of the National Natural Science Foundation of China
  3. Civil Aircraft Special Research Project
  4. [51875459]
  5. [91860124]
  6. [MJ-2017-F-17]

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This paper proposes a variational information constrained generative adversarial network (VICGAN) to address the issue of limited fault data leading to insufficient model training and over-fitting. The network incorporates the encoder into the discriminator, utilizes variational information constraint technique and representation matching module to effectively perform machine fault diagnosis, demonstrating admirable performance and stability.
In actual engineering scenarios, limited fault data leads to insufficient model training and over-fitting, which negatively affects the diagnostic performance of intelligent diagnostic models. To solve the problem, this paper proposes a variational information constrained generative adversarial network (VICGAN) for effective machine fault diagnosis. Firstly, by incorporating the encoder into the discriminator to map the deep features, an improved generative adversarial network with stronger data synthesis capability is established. Secondly, to promote the stable training of the model and guarantee better convergence, a variational information constraint technique is utilized, which constrains the input signals and deep features of the discriminator using the in-formation bottleneck method. In addition, a representation matching module is added to impose restrictions on the generator, avoiding the mode collapse problem and boosting the sample diversity. Two rolling bearing datasets are utilized to verify the effectiveness and stability of the presented network, which demonstrates that the presented network has an admirable ability in processing fault diagnosis with few samples, and performs better than state-of-the-art approaches.

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