4.7 Article

Deep Adversarial Domain Adaptation Model for Bearing Fault Diagnosis

Journal

IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS
Volume 51, Issue 7, Pages 4217-4226

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2019.2932000

Keywords

Fault diagnosis; Feature extraction; Rolling bearings; Deep learning; Data mining; Data models; Training; Adversarial network; bearing; deep learning; deep neural networks; domain adaptation (DA); fault diagnosis; feature extraction; machine learning; stack autoencoder (SAE); unsupervised learning

Funding

  1. National Natural Science Foundation of China [61972443, 61573299, 61503134]
  2. Hunan Provincial Hu-Xiang Young Talents Project of China [2018RS3095]
  3. Hunan Provincial Natural Science Foundation of China [2018JJ2134]

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The article introduces a deep adversarial domain adaptation (DADA) model for rolling bearing fault diagnosis, which combines deep stack autoencoder with representative feature learning to enhance classification accuracy. Experimental results demonstrate that the proposed method outperforms existing methods in terms of classification accuracy and generalization ability.
Fault diagnosis of rolling bearings is an essential process for improving the reliability and safety of the rotating machinery. It is always a major challenge to ensure fault diagnosis accuracy in particular under severe working conditions. In this article, a deep adversarial domain adaptation (DADA) model is proposed for rolling bearing fault diagnosis. This model constructs an adversarial adaptation network to solve the commonly encountered problem in numerous real applications: the source domain and the target domain are inconsistent in their distribution. First, a deep stack autoencoder (DSAE) is combined with representative feature learning for dimensionality reduction, and such a combination provides an unsupervised learning method to effectively acquire fault features. Meanwhile, domain adaptation and recognition classification are implemented using a Softmax classifier to augment classification accuracy. Second, the effects of the number of hidden layers in the stack autoencoder network, the number of neurons in each hidden layer, and the hyperparameters of the proposed fault diagnosis algorithm are analyzed. Third, comprehensive analysis is performed on real data to validate the performance of the proposed method; the experimental results demonstrate that the new method outperforms the existing machine learning and deep learning methods, in terms of classification accuracy and generalization ability.

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