1. A novel motor bearing fault diagnosis method based on a deep sparse binary autoencoder and principal component analysis [J];Xia Y;Insight-Non-Destructive Test Condition Monit,2023
2. Yu Q, Li J, Li Z et al (2021) A clustering K-SVD-based sparse representation method for rolling bearing fault diagnosis [J], vol 63. Insight - Non-Destructive Testing and Condition Monitoring, pp 160–167. 3
3. Bearing fault diagnosis based on EMD and improved Chebyshev distance in SDP image [J];Sun Y;Measurement,2021
4. Jing S, Yuan J, Li X et al (2018) Weak fault feature identification for rolling bearing based on EMD and spectral kurtosis method [C]//2018 International Conference on Information Systems and Computer Aided Education (ICISCAE). IEEE, : 235–239
5. Fault analysis of wind power rolling bearing based on EMD feature extraction [J];Meng D;CMES-Computer Model Eng Sci,2022