journal article Nov 15, 2022

Fault Diagnosis of Rolling Bearing Under Variable Working Conditions Based on CWT and T-ResNet

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Details
Published
Nov 15, 2022
Vol/Issue
11(8)
Pages
3747-3757
License
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Funding
National Key Scientific Instrument and Equipment Development Projects of China Award: HBTJ2023JD003
National Nature Foundation of China Award: 11872254
Engineering Scientific Research Project of Wuhu Yangtze River Tunnel Construction Headquarter of China Railway 14th Bureau Group Co. Ltd. Award: ZTSSJ-WHSD-GCKY-2021-002
Cite This Article
Ningkun Diao, Zhicheng Wang, Huaixiang Ma, et al. (2022). Fault Diagnosis of Rolling Bearing Under Variable Working Conditions Based on CWT and T-ResNet. Journal of Vibration Engineering & Technologies, 11(8), 3747-3757. https://doi.org/10.1007/s42417-022-00780-w