Bearing fault diagnosis based on optimized variational mode decomposition and 1D convolutional neural networks
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Donghua Deng | Asoke K Nandi | Chenguang Yang | Qinghua Wang | Hongqiang Wan | A. Nandi | Qinghua Wang | Cheng-Wei Yang | Hong Wan | Donghua Deng
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