4.7 Article

Health Assessment of Rotating Equipment With Unseen Conditions Using Adversarial Domain Generalization Toward Self-Supervised Regularization Learning

Journal

IEEE-ASME TRANSACTIONS ON MECHATRONICS
Volume 27, Issue 6, Pages 4675-4685

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMECH.2022.3163289

Keywords

Domain generalization (DG); health assessment; regularization learning; rotating equipment; unseen condition

Funding

  1. National Natural Science Foundation of China [52075095]

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Traditional health assessment models face challenges in dealing with domain shifts between different tasks. This study proposes an adversarial domain generalization framework to enhance the diversity of sample distribution and mitigate feature drift and semantic divergence for health assessment.
Traditional health assessment models work well under the assumption that the test and training samples obey a similar distribution. However, it is practically impossible to eliminate domain shifts between different tasks. Thus, most work tries to establish a data-driven approach via domain adaptation to accomplish transfer learning between different operating conditions. Sufficient target data are needed to participate in the training, which may not normally be available due to most working scenarios being unseen. An adversarial domain generalization framework with regularization learning (ADGR) is proposed for the health assessment to mine latent domains. Also, the latent domain is expanded to the unseen domain as possible. More specifically, the diversity of the sample distribution is augmented by adversarial training and the maximization of the domain discrepancy between the latent and source domains. Meanwhile, self-supervised interdomain regularization and semantical consistent regularization are proposed to mitigate the feature drift of the domain classifier and semantic divergence between source and latent domains. The case study shows that the ADGR-based health assessment approach achieves competitive prediction accuracy under unseen conditions, demonstrating its potential as a diagnostic solution.

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