CROSS-WORKING CONDITIONS FAULT DIAGNOSIS OF ROTATING MACHINERY BASED ON PARTIAL DOMAIN ADAPTATION

被引:0
|
作者
Ma T. [1 ,2 ]
Sun L. [2 ]
Han B. [2 ]
Shi Y. [1 ]
Deng A. [1 ]
机构
[1] School of Energy and Environment, Southeast University, Nanjing
[2] CHN Energy Taicang Electric Power Co.,Ltd., Taicang
来源
关键词
adversarial training; domain adaptation; fault diagnosis; transfer learning; wind turbines;
D O I
10.19912/j.0254-0096.tynxb.2023-0275
中图分类号
学科分类号
摘要
To address the diagnosis problem in the scenario of varying data distribution and inconsistent label space due to the change of wind turbine working conditions,a partial domain adaptation method(FWDAN)based on fusion weights domain adversarial is proposed for cross-working condition fault diagnosis of rotating machinery. The core idea of FWDAN is to apply the training weights at both the sample and category to weaken the role of outlier category samples in the adversarial training process and enhance the learning of shared category samples,thus facilitating the transfer of shared diagnostic knowledge between domains and improving the diagnostic performance. For sample-level weight generation,the label information is coupled into the sample data to fully explore the feature representation. Further,different statistical methods are applied to generate weights for assisting model training according to the differences between source and target domain data to achieve the purpose of promoting positive model transfer and reducing the risk of negative transfer. The experimental results of two diagnostic cases built on rolling bearing and gearbox datasets show that the proposed method has higher diagnostic accuracy and stronger generalization ability than other methods. © 2024 Science Press. All rights reserved.
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页码:479 / 486
页数:7
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共 15 条
  • [1] CHEN X F, GUO Y J., Vibration monitoring and diagnosis of wind power equipment[M], pp. 4-5, (2016)
  • [2] QI Y S, SHAN C C,, GAO S L,, Et al., Fault diagnosis strategy of wind turbines bearing based on AEWT-KELM [J], Acta energiae solaris sinica, 43, 8, pp. 281-291, (2022)
  • [3] ZHANG W, DING Q, Et al., Multi-Layer domain adaptation method for rolling bearing fault diagnosis[J], Signal processing, 157, pp. 180-197, (2019)
  • [4] AN W J, CHEN C Z,, TIAN M, Et al., Research on bearing fault diagnosis of wind turbines based on transfer learning [J], Acta energiae solaris sinica, 44, 6, pp. 367-373, (2023)
  • [5] KANG S Q, HU M W, WANG Y J,, Et al., Fault diagnosis method of a rolling bearing under variable working conditions based on feature transfer learning[J], Proceedings of the CSEE, 39, 3, pp. 764-772, (2019)
  • [6] LEI C L, XUE L L,, JIAO M X,, Et al., Fault diagnosis method of wind turbines rolling bearing based on improved ResNet and transfer learning[J], Acta energiae solaris sinica, 44, 6, pp. 436-444, (2023)
  • [7] DENG M Q, ZHU J,, Et al., Intelligent fault diagnosis of rotating components in the absence of fault data:a transfer-based approach[J], Measurement, 173, (2021)
  • [8] ZHANG Y C, Et al., Digital twin-driven partial domain adaptation network for intelligent fault diagnosis of rolling bearing[J], Reliability engineering & system safety, 234, (2023)
  • [9] DENG Y F, HUANG D L,, DU S C,, Et al., A double-layer attention based adversarial network for partial transfer learning in machinery fault diagnosis[J], Computers in industry, 127, (2021)
  • [10] ZHANG W., Deep learning-based partial domain adaptation method on intelligent machinery fault diagnostics [J], IEEE transactions on industrial electronics, 68, 5, pp. 4351-4361, (2021)