2024
DOI: 10.1177/14759217241293006
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Acoustic monitoring of wind turbine blades using wavelet packet analysis and 1D convolutional neural networks

Fangfang Liu,
Wenxian Yang,
Kexiang Wei
et al.

Abstract: Wind turbine blades (WTBs) are susceptible to faults in the harsh wind farm environments, making their safety a matter of paramount importance. Unfortunately, existing composite blade monitoring methods face various limitations in practical use. To address this issue, the study presents an intelligent fault detection method to assess the health of both the structural integrity and its skin. This has never been tried before by scholars. The study begins with the collection of acoustic signals from the blade cha… Show more

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