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  4. Fault Detection in New Wind Turbines with Limited Data by Generative Transfer Learning
 

Fault Detection in New Wind Turbines with Limited Data by Generative Transfer Learning

URI
https://arbor.bfh.ch/handle/arbor/46305
Version
Published
Identifiers
10.1016/j.egyai.2025.100626
Date Issued
2025-12
Author(s)
Jonas, Stefan  
Meyer, Angela  
Type
Article
Language
English
Subjects

Generative transfer l...

Wind turbines

Fault detection

Abstract
Intelligent condition monitoring of wind turbines is essential for reducing downtimes. Machine learning models trained on wind turbine operation data are commonly used to detect anomalies and, eventually, operation faults. However, data-driven normal behavior models (NBMs) require a substantial amount of training data, as NBMs trained with scarce data may result in unreliable fault detection. To overcome this limitation, we present a novel generative deep transfer learning approach to make SCADA samples from one wind turbine lacking training data resemble SCADA data from wind turbines with representative training data. Through CycleGAN-based domain mapping, our method enables the application of an NBM trained on an existing wind turbine to a new one with severely limited data. We demonstrate our approach on field data mapping SCADA samples across 7 substantially different WTs. Our findings show significantly improved fault detection in wind turbines with scarce data. Our method achieves the most similar anomaly scores to an NBM trained with abundant data, outperforming NBMs trained on scarce training data with improvements of +10.3% in F1-score when 1 month of training data is available and +16.8% when 2 weeks are available. The domain mapping approach outperforms conventional fine-tuning at all considered degrees of data scarcity, ranging from 1 to 8 weeks of training data. The proposed technique enables earlier and more reliable fault detection in newly installed wind farms, demonstrating a novel and promising research direction to improve anomaly detection when faced with training data scarcity.
DOI
https://doi.org/10.24451/arbor.12673
Publisher DOI
10.1016/j.egyai.2025.100626
Journal or Serie
Energy and AI
ISSN
2666-5468
Publisher URL
https://www.sciencedirect.com/science/article/pii/S2666546825001582
Related URL
https://www.sciencedirect.com/
https://www.sciencedirect.com/journal/energy-and-ai
Organization
Technik und Informatik  
Volume
22
Publisher
Elsevier ScienceDirect
Submitter
Meyer, Angela
Citation apa
Jonas, S., & Meyer, A. (2025). Fault Detection in New Wind Turbines with Limited Data by Generative Transfer Learning. In Energy and AI (Vol. 22, pp. 1–16). Elsevier ScienceDirect. https://doi.org/10.24451/arbor.12673
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Version
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Size

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