共 25 条
- [1] Zang J Y, Liu Y F, Wang B C, Et al., Technology forecasting and roadmapping of intelligent manufacturing by 2035, J Mech Eng, 58, pp. 285-304, (2022)
- [2] Shang C, You F., Data analytics and machine learning for smart process manufacturing: Recent advances and perspectives in the big data era, Engineering, 5, pp. 1010-1016, (2019)
- [3] Li J, Li X, Xu Y M, Et al., Recent advances and prospects in industrial AI and applications, Acta Autom Sin, 46, pp. 2031-2044, (2020)
- [4] Huang R Y, Li J P, Wang Z, Et al., Intelligent diagnostic and prognostic method based on multitask learning for industrial equipment, Sci Sin Tech, 52, pp. 123-137, (2022)
- [5] Liu R, Yang B, Zio E, Et al., Artificial intelligence for fault diagnosis of rotating machinery: A review, Mech Syst Signal Processing, 108, pp. 33-47, (2018)
- [6] Zhao Z, Li T, Wu J, Et al., Deep learning algorithms for rotating machinery intelligent diagnosis: An open source benchmark study, ISA Trans, 107, pp. 224-255, (2020)
- [7] Fu S, Zhong S S, Lin L, Et al., Gas turbine fault diagnosis method under small sample based on transfer learning, Comp Integrated Manuf Syst, 27, pp. 3450-3461, (2021)
- [8] Yang B, Lee C G, Lei Y, Et al., Deep partial transfer learning network: A method to selectively transfer diagnostic knowledge across related machines, Mech Syst Signal Processing, 156, (2021)
- [9] Han T, Liu C, Yang W, Et al., A novel adversarial learning framework in deep convolutional neural network for intelligent diagnosis of mechanical faults, Knowledge-Based Syst, 165, pp. 474-487, (2019)
- [10] Shao H D, Li W, Liu Y, Et al., Fault diagnosis of rotor-bearing system under time-varying speeds by using dual-threshold attention-embedded GAN and small samples, J Mech Eng, 59, pp. 1-9, (2023)