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Original scientific paper

https://doi.org/10.17559/TV-20230501000593

Fault Diagnosis of Transfer Learning Equipment Based on Cloud Edge Collaboration + Confrontation Network

Ping Zou ; 1. School of Economics and Management, Beijing Jiaotong University, Beijing 100040, China E-mail: 18113038@bjtu.edu.cn 2. Sany Group Co.,Ltd., Changsha, Changsha County, Hunan Province, 430100, China *
Zhenji Zhang ; School of Economics and Management, Beijing Jiaotong University, Beijing 100040, China
Lei Jiang ; China Railway Information Technology Group Co., Ltd., Building 1, Yard 5, Beifengwo Road, Haidian District, Beijing, 100844, China

* Corresponding author.


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Abstract

With the continuous improvement of product quality, production efficiency, and complexity, higher requirements are put forward for the reliability and stability of equipment, and the difficulty of real-time diagnosis of faults and functional failures is also increasing. The traditional fault diagnosis methods based on signal processing and Convolutional neural network cannot meet the requirements of on-site online real-time fault diagnosis of equipment. One is that the vibration signals on the industrial site are superimposed on each other, nonlinear and unstable and traditional feature extraction methods take a long time, resulting in unstable extraction results. Second, massive data and fault diagnosis algorithms need rich computing and storage resources. The traditional Convolutional neural network method conflicts with the real-time response requirements of fault diagnosis. At the same time, different models of fault diagnosis models have poor generalization ability, and the diagnostic accuracy is not high or even impossible to diagnose. To solve the above problems, this paper proposes a fault diagnosis method based on industrial Internet platform, which is equipment cloud edge collaboration + adaptive countermeasure network Transfer learning. On the edge side, the vibration signals collected from key components of the model are processed using empirical mode decomposition (EEMD) to solve the problem of signal nonlinearity and stationarity. In the cloud, EEMD signals of different models are decomposed into source domain and target domain for confrontation training, which is used as the input of the improved domain adversarial network model DANN (Domain Adversarial Neural Networks), so as to improve the accuracy of fault diagnosis of different models by using cloud computing power and the improved adversarial network Transfer learning algorithm. Through the analysis of experimental data, this paper verifies that the model after the confrontation network Transfer learning is more accurate than the traditional fault diagnosis method. Through the coordination of computing resources and real-time requirements, real-time diagnosis of cloud side collaborative bearing fault is realized.

Keywords

cloud edge; cooperative countermeasure; fault diagnosis; network Transfer learning

Hrčak ID:

309235

URI

https://hrcak.srce.hr/309235

Publication date:

25.10.2023.

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