The following publications are possibly variants of this publication:
- Fault diagnosis for rotating machinery based on Local Mean Decomposition morphology filtering and Least Square Support Vector MachineTongle Xu, Zhaojie Yin, Daoyong Cai, Diankun Zheng. jifs, 32(3):2061-2070, 2017. [doi]
- Gear fault pattern recognition based on atomic decomposition and Support Vector MachinesGuodong Wang, Jianhong Yang, Min Li, Jinwu Xu. fskd 2010: 1550-1554 [doi]
- Sensor Fault Diagnosis Based on Ensemble Empirical Mode Decomposition and Optimized Least Squares Support Vector MachineGuojun Ding, Lide Wang, Ping Shen, Peng Yang. jcp, 8(11):2916-2924, 2013. [doi]
- Bearing Fault Diagnosis Method Based on RCMFDE-SPLR and Ocean Predator Algorithm Optimizing Support Vector MachineMingxiu Yi, Chengjiang Zhou, Limiao Yang, Jintao Yang, Tong Tang, Yunhua Jia, Xuyi Yuan. entropy, 24(11):1696, November 2022. [doi]
- Rolling Bearing Fault Diagnosis Based on Support Vector Machine Optimized by Improved Grey Wolf AlgorithmWeijie Shen, Maohua Xiao, Zhenyu Wang, Xinmin Song. sensors, 23(14):6645, July 2023. [doi]