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Yan et al., 2023 - Google Patents

Deep order-wavelet convolutional variational autoencoder for fault identification of rolling bearing under fluctuating speed conditions

Yan et al., 2023

Document ID
17795002045379459763
Author
Yan X
She D
Xu Y
Publication year
Publication venue
Expert Systems with Applications

External Links

Snippet

Because of the complex operating environment of high-end industrial machinery, rolling bearing is generally operated at fluctuating working conditions such as variable speeds or loads, thus enables fault feature information is not obvious. That said, bearing fault …
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