Publisher
Springer Nature Singapore
Reference10 articles.
1. Liu Y, Guo L, Gao H, You Z, Ye Y, Zhang B (2022) Machine vision based condition monitoring and fault diagnosis of machine tools using information from machined surface texture: a review. Mech Syst Signal Process 164:108068
2. Tang H, Liao Z, Chen P, Zuo D, Yi S (2021) A robust deep learning network for low-speed machinery fault diagnosis based on multi-kernel and RPCA. IEEE/ASME Trans Mechat 99:1
3. Hao Y, Zhu L, Yan B, Ren T, Zhao J, Ning X et al (2023) Stiffness design and multi-objective optimization of machine tool structure based on biological inspiration. J Vib Control 29(11–12):2774–2788
4. Wu Y, Liu L, Qian S (2021) A small sample bearing fault diagnosis method based on variational mode decomposition, autocorrelation function, and convolutional neural network. Int J Adv Manuf Technol 124(11–12):3887–3898
5. Zhang Q, Deng L (2023) An intelligent fault diagnosis method of rolling bearings based on short-time fourier transform and convolutional neural network. J Fail Anal Prev 23(2):795–811