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He et al., 2020 - Google Patents

A data-driven group-sparse feature extraction method for fault detection of wind turbine transmission system

He et al., 2020

Document ID
3211666167651247356
Author
He W
Guo B
Chen B
Ye J
Bechhoefer E
Publication year
Publication venue
Measurement Science and Technology

External Links

Snippet

Vibration monitoring using sensors mounted on machines is widely used for rotating machinery fault diagnosis. The periodic overlapping group sparsity (POGS) method has been developed in previous work of authors, and is an effective technique for detecting …
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