1. F. Cong, J. Chen and G. Dong, Spectral kurtosis based on AR model for fault diagnosis and condition monitoring of rolling bearing, Journal of Mechanical Science and Technology, 26 (2) (2012) 301–306.
2. A. Tabrizi, L. Garibaldi, A. Fasana and S. Marchesiello, A novel feature extraction for anomaly detection of roller bearings based on performance improved ensemble empirical mode decomposition and Teager–Kaiser energy operator, International Journal of Prognostics and Health Management, 6 (Special Issue Uncertainty in PHM) (2015) 1–10.
3. B.-S. Yang, T. Han and W.-W. Hwang, Fault diagnosis of rotating machinery based on multi-class support vector machines, Journal of Mechanical Science and Technology, 19 (3) (2005) 846–859.
4. L. Zhang and Y. Dong, Research on diagnosis of AC engine wear fault based on support vector machine and information fusion. Journal of Computers, 7 (9) (2012) 2292–2297.
5. S. Mishra, O. A. Vanli and C. Park, A multivariate cumulative sum method for continuous damage monitoring with lamb-wave sensors. International Journal of Prognostics and Health Management, 6 (Special Issue Uncertainty in PHM) (2015) 1–11.