Multi-mode data augmentation and fault diagnosis of rotating machinery using modified ACGAN designed with new framework

Advanced Engineering Informatics - Tập 52 - Trang 101552 - 2022
Wei Li1, Xiang Zhong1, Haidong Shao1, Baoping Cai2, Xingkai Yang3
1State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, College of Mechanical and Vehicle Engineering, Hunan University, Changsha, 410082, China
2College of Mechanical and Electronic Engineering, China University of Petroleum, Qingdao 266580, China
3Department of Mechanical Engineering, University of Alberta, Edmonton, Alberta T6G 1H9, Canada

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