1. D. Liu, X. Lai, Z. H. Xiao, D. Liu, X. Hu, P. Zhang and R. Rubini, Fault diagnosis of rotating machinery based on convolutional neural network and singular value decomposition, Shock and Vibration, 2020 (2020) 6542913.
2. C. Z. Wu, P. C. Jiang, C. Ding, F. Z. Feng and T. Chen, Intelligent fault diagnosis of rotating machinery based on one-dimensional convolutional neural network, Computers in Industry, 108 (2019) 53–61.
3. R. Liu, B. Yang, E. Zio and X. F. Chen, Artificial intelligence for fault diagnosis of rotating machinery: a review, Mechanical Systems and Signal Processing, 108 (2018) 33–47.
4. C. Lu, Y. Wang, M. Ragulskis and Y. J. Cheng, Fault diagnosis for rotating machinery: a method based on image processing, PLoS ONE, 11(10) (2017) 1–22.
5. S. Wan, X. Zhang, L. J. Dou and A. Lay-Ekuakille, Compound fault diagnosis of bearings using an improved spectral kurtosis by MCDK, Mathematical Problems in Engineering, 2018 (2018) 6513045.