4.8 Article

Diagnosing Rotating Machines With Weakly Supervised Data Using Deep Transfer Learning

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 16, Issue 3, Pages 1688-1697

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2019.2927590

Keywords

Fault diagnosis; Training; Task analysis; Feature extraction; Rotating machines; Deep learning; Adversarial training; deep learning; fault diagnosis; rotating machinery; transfer learning

Funding

  1. Fundamental Research Funds for the Central Universities [N170503012, N170308028, N180708009]
  2. Scientific Research Fund of Liaoning Provincial Education Department [L201737]
  3. National Natural Science Foundation of China [61871107, TII-19-1296]

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Rotating machinery fault diagnosis problems have been well-addressed when sufficient supervised data of the tested machine are available using the latest data-driven methods. However, it is still challenging to develop effective diagnostic method with insufficient training data, which is highly demanded in real-industrial scenarios, since high-quality data are usually difficult and expensive to collect. Considering the underlying similarities of rotating machines, data mining on different but related equipments potentially benefit the diagnostic performance on the target machine. Therefore, a novel transfer learning method for diagnostics based on deep learning is proposed in this article, where the diagnostic knowledge learned from sufficient supervised data of multiple rotating machines is transferred to the target equipment with domain adversarial training. Different from the existing studies, a more generalized transfer learning problem with different label spaces of domains is investigated, and different fault severities are also considered in fault diagnostics. The experimental results on four datasets validate the effectiveness of the proposed method, and show it is feasible and promising to explore different datasets to improve diagnostic performance.

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