2024
DOI: 10.3390/s24092833
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LSTM-Autoencoder Based Anomaly Detection Using Vibration Data of Wind Turbines

Younjeong Lee,
Chanho Park,
Namji Kim
et al.

Abstract: The problem of energy depletion has brought wind energy under consideration to replace oil- or chemical-based energy. However, the breakdown of wind turbines is a major concern. Accordingly, unsupervised learning was performed using the vibration signal of a wind power generator to achieve an outlier detection performance of 97%. We analyzed the vibration data through wavelet packet conversion and identified a specific frequency band that showed a large difference between the normal and abnormal data. To empha… Show more

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Cited by 6 publications
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