CTNet: A data-driven time-frequency technique for wind turbines fault diagnosis under time-varying speeds

被引:31
作者
Zhao, Dezun [1 ]
Shao, Depei [1 ]
Cui, Lingli [1 ]
机构
[1] Beijing Key Laboratory of Advanced Manufacturing Technology, Beijing University of Technology, Beijing
基金
中国国家自然科学基金;
关键词
Deep learning; Fault diagnosis; Time-frequency analysis; Time-varying speeds; Wind turbine;
D O I
10.1016/j.isatra.2024.08.029
中图分类号
学科分类号
摘要
Nonstationary fault signals collected from wind turbine planetary gearboxes and bearings often exhibit close-spaced instantaneous frequencies (IFs), or even crossed IFs, bringing challenges for existing time-frequency analysis (TFA) methods. To address the issue, a data-driven TFA technique, termed CTNet is developed. The CTNet is a novel model that combines a fully convolutional auto-encoder network with the convolutional block attention module (CBAM). In the CTNet, the encoder layer is first designed to extract coarse features of the time-frequency representation (TFR) calculated by the general linear Chirplet transform (GLCT); second, the decoder layer is combined to restore and conserve details of the key time-frequency features; third, the skip connections are designed to accelerate training by linking extracted and reconstructed features; finally, the CBAM is introduced to adaptively explore channel and spatial relationships of the TFR, focusing more on close-spaced or crossed frequency features, and effectively reconstruct the TFR. The effectiveness of the CTNet is validated by numerical signals with close-spaced or crossed IFs, and real-world signals of wind turbine planetary gearbox and bearings. Comparison analysis with state-of-the-art TFA methods shows that the CTNet has high time-frequency resolution in characterizing nonstationary signals and a much better ability to detect wind turbine faults. © 2024 ISA
引用
收藏
页码:335 / 351
页数:16
相关论文
共 47 条
  • [1] G W E C Global wind report 2023[J], (2023)
  • [2] Cui L., Jiang Z., Liu D., Et al., A novel adaptive generalized domain data fusion-driven kernel sparse representation classification method for intelligent bearing fault diagnosis[J], Expert Syst Appl, 247, (2024)
  • [3] Zhang D., Feng Z., Wind turbine planetary gearbox fault diagnosis via proportion-extracting synchrosqueezing chirplet transform[J], J Dyn, Monit Diagn, 2, 3, pp. 177-182, (2023)
  • [4] Zhao D., Wang H., Cui L., Frequency-chirprate synchrosqueezing-based scaling chirplet transform for wind turbine nonstationary fault feature time–frequency representation[J], Mech Syst Signal Process, 209, (2024)
  • [5] Wang Z., Li G., Yao L., Et al., Intelligent fault detection scheme for constant-speed wind turbines based on improved multiscale fuzzy entropy and adaptive chaotic Aquila optimization-based support vector machine[J], ISA Trans, 138, pp. 582-602, (2023)
  • [6] Miaofen L., Youmin L., Tianyang W., Et al., Adaptive synchronous demodulation transform with application to analyzing multicomponent signals for machinery fault diagnostics[J], Mech Syst Signal Process, 191, (2023)
  • [7] Zhao D., Huang X., Cui L., Horizontal reassigning transform for bearing fault impulses characterizing[J], IEEE Sens J, 24, 2, pp. 1837-1846, (2024)
  • [8] Yan Z., Xu Y., Zhang K., Et al., Adaptive synchroextracting transform and its application in bearing fault diagnosis[J], ISA Trans, 137, pp. 574-589, (2023)
  • [9] Zhong J., Huang Y., Time-frequency representation based on an adaptive short-time Fourier transform[J], IEEE Trans Signal Process, 58, 10, pp. 5118-5128, (2010)
  • [10] Ma C., Liang C., Jiang Z., Et al., A novel time-frequency slice extraction method for target recognition and local enhancement of non-stationary signal features[J], ISA transactions, 146, pp. 319-335, (2024)