Unsupervised anomaly detection of permanent magnet offshore wind generators through electrical and electromagnetic measurements
Ali Dibaj,
Mostafa Valavi,
Amir R. Nejad
Abstract:Abstract. This paper investigates fault detection in offshore wind permanent magnet synchronous generators (PMSG) for demagnetization and eccentricity faults (both static and dynamic) at various severity levels. The study utilizes a high-speed PMSG model, on the NREL 5-MW reference offshore wind turbine, and at the rated wind speed, to simulate healthy and faulty conditions. An unsupervised convolutional autoencoder (CAE) model, trained on simulated signals from the generator in its healthy state, serves for a… Show more
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