共 20 条
- [1] CHU W, LIU T, WANG Z Y, Et al., Research on the sparse optimization method of periodic weights and its application in bearing fault diagnosis, Mechanism and Machine Theory, 177, (2022)
- [2] ZHUANG D Y, LIU H R, ZHENG H, Et al., The IBA-ISMO method for rolling bearing fault diagnosis based on VMD-Sam- pie entropy, Sensors, 23, 2, (2023)
- [3] GU H, LIU W Y, ZHANG Y, Et al., A novel fault diagnosis method of wind turbine bearings based on compressed sensing and AlexNet, Measurement Science and Technology, 33, 11, (2022)
- [4] MENG D B, WANG H T, YANG S Y, Et al., Fault analysis of wind power rolling bearing based on emd feature extraction [J], Computer Modeling in Engineering & Sciences, 130, 1, pp. 543-558, (2022)
- [5] BANG J, DI MARCO P, SHIN H, Et al., Deep transfer learning-based fault diagnosis using wavelet transform for limited data, Applied Sciences, 12, 15, (2022)
- [6] DONOHO D L., De-noising by soft-thresholding, IEEE transactions on information theory, 41, 3, pp. 613-627, (1995)
- [7] GU J, PENG Y X, LU H, Et al., A novel fault diagnosis method of rotating machinery via VMD, CWT and improved CNN, Measurement, 200, (2022)
- [8] LIU Jiarui, YANG Guotian, WANG Xiaowei, A wind turbine fault diagnosis method based on Siamese deep neural network, Journal of Systems Simulation, 34, 11, pp. 2348-2358, (2022)
- [9] SHEN Tao, LI Shunming, CNN-LSTM method with batch normalization for rolling bearing fault diagnosis [J], Computer Integrated Manufacturing Systems, 28, 12, pp. 3946-3955, (2022)
- [10] CHEN Qilei, JIANG Yiyue, TANG Yao, Et al., An induction motor fault diagnosis method based on the time-frequency image method and an improved graph convolutional network [J], Journal of Vibration and Shock, 41, 24, pp. 241-248, (2022)