4.6 Article

An Intelligent Diagnosis Method for Machine Fault Based on Federated Learning

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 24, 页码 -

出版社

MDPI
DOI: 10.3390/app112412117

关键词

federated learning; fault diagnosis; deep convolutional neural network; model fusion

资金

  1. National Natural Science Foundation of China [52075236]
  2. Laboratory of Science and Technology on Integrated Logistics Support, National University of Defense Technology [6142003190210]
  3. key projects of the Natural Science Foundation of Jiangxi Province [20212ACB202005]
  4. Shaanxi Key Laboratory of Mine Electromechanical Equipment Intelligent Monitoring [SKL-MEEIM201901]

向作者/读者索取更多资源

A machine fault intelligent diagnosis method based on federated learning is proposed in this paper, which establishes local fault diagnosis models and fuses global model parameters to recognize newly added fault types. The method is validated on bearing data with an accuracy of 100%.
In engineering, the fault data unevenly distribute and difficultly share, which causes that the existing fault diagnosis methods cannot recognize the newly added fault types. An intelligent diagnosis method for machine fault is proposed based on federated learning. Firstly, the local fault diagnosis models diagnosing the existing fault data and the newly added fault data are established by deep convolutional neural network. Then, the weight parameters of local models are fused into global model parameters by federated learning. Finally, the global model parameters are transmitted to each local model. Therefore, each local model update into a global shared model which can recognize the newly added fault types. The proposed method is verified by bearing data. Compared with the traditional model, which can only diagnose the existing fault data but cannot recognize newly added fault types, the federated fault diagnosis model fusing weight parameters can diagnose newly added faults without exchanging the data, and the accuracy is 100%. The proposed method provides an effective method to solve the poor sharing of fault data and poor generalization of fault diagnosis model for mechanical equipment.

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