Intelligent fault identification for industrial automation system via multi-scale convolutional generative adversarial network with partially labeled samples

  • Tongyang Pan
  • , Jinglong Chen
  • , Jinsong Xie
  • , Yuanhong Chang
  • , Zitong Zhou

Research output: Contribution to journalArticlepeer-review

76 Scopus citations

Abstract

Rolling bearings are the widely used parts in most of the industrial automation systems. As a result, intelligent fault identification of rolling bearing is important to ensure the stable operation of the industrial automation systems. However, a major problem in intelligent fault identification is that it needs a large number of labeled samples to obtain a well-trained model. Aiming at this problem, the paper proposes a semi-supervised multi-scale convolutional generative adversarial network for bearing fault identification which uses partially labeled samples and sufficient unlabeled samples for training. The network adopts a one-dimensional multi-scale convolutional neural network as the discriminator and a multi-scale deconvolutional neural network as the generator and the model is trained through an adversarial process. Because of the full use of unlabeled samples, the proposed semi-supervised model can detect the faults in bearings with limited labeled samples. The proposed method is tested on three datasets and the average classification accuracy arrived at of 100%, 99.28% and 96.58% respectively Results indicate that the proposed semi-supervised convolutional generative adversarial network achieves satisfactory performance in bearing fault identification when the labeled data are insufficient.

Original languageEnglish
Pages (from-to)379-389
Number of pages11
JournalISA Transactions
Volume101
DOIs
StatePublished - Jun 2020

Keywords

  • Deep learning
  • Fault diagnosis
  • Intelligent fault identification
  • Rolling bearing

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