共 26 条
- [1] Yin J L, Wang W Y, Man Z H, Et al., Statistical modeling of gear vibration signals and its application to detecting and diagnosing gear faults, Information Sciences, 259, pp. 295-303, (2014)
- [2] Li W, Zhu Z C, Jiang F, Et al., Fault diagnosis of rotating machinery with a novel statistical feature extraction and evaluation method, Mechanical Systems and Signal Processing, 50, 51, pp. 414-426, (2015)
- [3] Shen C Q, Wang D, Kong F R, Et al., Fault diagnosis of rotating machinery based on the statistical parameters of wavelet packet paving and a generic support vector regressive classifier, Measurement, 46, 4, pp. 1551-1564, (2013)
- [4] Ma Hui, Che Di, Niu Qiang, Et al., Fault diagnosis of elevator bearing based on deep neural network, Computer Engineering and Applications, 16, pp. 123-129, (2019)
- [5] Liu Wen-peng, Liao Ying-ying, Yang Shao-pu, Et al., Fault diagnosis of rolling bearings based onmultipoint kurtosis spectrums and the maximum correlated kurtosis deconvolution method, Journal of Vibration and Shock, 38, 2, pp. 146-151, (2019)
- [6] Hao Yan, Wang Tai-yong, Wan Jian, Et al., Mechanical fault diagnosis based on empirical mode decomposition and generalized dimension, Journal of Jilin University(Engineering and Technology Edition), 42, 2, pp. 392-396, (2012)
- [7] Gao Li-xin, Zhang Jian-yu, Cui Ling-li, Et al., Research on fault diagnosis technology of low speed and heavy duty equipments based on wavelet analysis, Chinese Journal of Mechanical Engineering, 41, 12, pp. 222-227, (2005)
- [8] Li Wen-jun, Zhang Hong-kun, Cheng Xiu-sheng, Sensor fault diagnosis based on wavelet and neural network, Journal of Jilin University(Engineering and Technology Edition), 34, 3, pp. 491-495, (2004)
- [9] Jia F, Lei Y G, Lin J, Et al., Deep neural networks: a promising tool for fault characteristic mining and intelligent diagnosis of rotating machinery with massive data, Mechanical Systems and Signal Processing, 72, 73, pp. 303-315, (2016)
- [10] Mu Liang, Wang Kai, Li Yan, Et al., Bearing fault diagnosis based on the stacked P-order polynomial principal component analysis, Journal of Vibration and Shock, 38, 2, pp. 25-32, (2019)