Application of Multiscale Learning Neural Network Based on CNN in Bearing Fault Diagnosis

Daichao Wang1, Qingwen Guo1, Shuicheng Yan1, Shengyao Gao2, Yibin Li1
1Shandong University, Qingdao, 266237, Shandong, China
2China Naval Academy, Beijing, 100161, China

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