Journal of Optoelectronics · Laser, Volume. 36, Issue 1, 69(2025)
A rolling bearing fault diagnosis method based on deep subspace learning and data augmentation
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ZHANG Shuaishuai, ZHANG Chao, WANG Xiaofeng. A rolling bearing fault diagnosis method based on deep subspace learning and data augmentation[J]. Journal of Optoelectronics · Laser, 2025, 36(1): 69
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Received: Jul. 15, 2023
Accepted: Jan. 23, 2025
Published Online: Jan. 23, 2025
The Author Email: WANG Xiaofeng (jasonshuai0212@163.com)