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Open AccessArticle
Advanced Fault Detection of Permanent Magnet Faults in Offshore Wind Turbine Generators Using Finite Element Analysis and Deep Transfer Learning
by
Hüseyin Tayyer Canseven
Hüseyin Tayyer Canseven
Hüseyin Tayyer Canseven received the B.Sc. and M.Sc. degrees in Electrical and Electronics from in [...]
Hüseyin Tayyer Canseven received the B.Sc. and M.Sc. degrees in Electrical and Electronics Engineering from Ege University, Izmir, Turkey, in 2018 and 2022, respectively, and the D.Sc. degree in Electrical Engineering from Lappeenranta-Lahti University of Technology (LUT), Lappeenranta, Finland, in 2025. He is currently a Post-Doctoral Researcher with the Department of Electrical Engineering, LUT University. His research interests focus on electrical machines.
1
,
Mustafa Ercire
Mustafa Ercire 2
,
Merve Cömert
Merve Cömert 3
,
Abdurrahman Ünsal
Abdurrahman Ünsal 3
and
Nur Sarma
Nur Sarma
NUR SARMA received the B.Sc. and M.Sc. degrees in electrical and
electronic engineering (EEE) from [...]
NUR SARMA received the B.Sc. and M.Sc. degrees in electrical and
electronic engineering (EEE) from Sakarya University, Türkiye, in 2012, and the
Ph.D. degree in EEE from The University of Manchester, U.K., in 2017. She is
currently with Durham University, U.K., as an Assistant Professor. Her research
interests include the modeling and analysis of electric machines, power systems
analysis, fault diagnosis and condition monitoring of electric machines,
renewable power generation, and power conversion.
4,*
1
Department of Electrical Engineering, LUT University, 53850 Lappeenranta, Finland
2
Department of Computer Science, Gediz Vocational School, Kütahya Dumlupınar University, Kutahya 43600, Turkey
3
Department of Electrical and Electronics Engineering, Kütahya Dumlupınar University, Kutahya 43100, Turkey
4
Engineering Department, Durham University, Durham DH1 3LE, UK
*
Author to whom correspondence should be addressed.
Machines 2026, 14(6), 665; https://doi.org/10.3390/machines14060665 (registering DOI)
Submission received: 16 April 2026
/
Revised: 29 May 2026
/
Accepted: 1 June 2026
/
Published: 8 June 2026
Abstract
As the offshore wind industry scales toward 15 MW capacity, the reliability of Direct-Drive Permanent Magnet Synchronous Generators (DD-PMSGs) becomes critical. However, real-world run-to-failure data for these massive, multi-pole machines is virtually non-existent, creating a barrier for developing effective data-driven diagnostic systems. This study proposes a high-fidelity framework for detecting permanent magnet faults in the International Energy Agency (IEA) 15 MW Reference Wind Turbine. Using Finite Element Analysis (FEA), a dataset (magnetic flux and back electromotive-force (EMF)) capturing the electromagnetic signatures of healthy and faulty states of a PMSG under varying severities is generated. To improve the power of computer vision, 1D time-series signals were transformed into 2D images. Specifically, Gramian Angular Fields (GAFs) and Recurrence Plots (RPs) were applied to magnetic flux density signals, while Markov Transition Fields (MTFs) were applied to back-EMF signals. These representations were then fused into multi-channel Red-Green-Blue (RGB) images and processed via a ResNet-18 Deep Transfer Learning model using a strictly non-overlapping, leakage-free dataset partitioning strategy. The proposed framework achieved a classification accuracy of 99.45% on noise-free data. Furthermore, robustness testing under varying levels of Additive White Gaussian Noise (AWGN) (30 dB, 40 dB, and 50 dB Signal-to-Noise Ratio (SNR)) demonstrated sustained high performance, maintaining over 90% accuracy even under severe 30 dB noise conditions. Comparative analysis proved that this multi-channel fusion significantly outperforms single-channel encoding methods, which collapse under heavy noise, validating the scalability of the framework and applicability for next-generation condition monitoring in harsh offshore environments.
Share and Cite
MDPI and ACS Style
Canseven, H.T.; Ercire, M.; Cömert, M.; Ünsal, A.; Sarma, N.
Advanced Fault Detection of Permanent Magnet Faults in Offshore Wind Turbine Generators Using Finite Element Analysis and Deep Transfer Learning. Machines 2026, 14, 665.
https://doi.org/10.3390/machines14060665
AMA Style
Canseven HT, Ercire M, Cömert M, Ünsal A, Sarma N.
Advanced Fault Detection of Permanent Magnet Faults in Offshore Wind Turbine Generators Using Finite Element Analysis and Deep Transfer Learning. Machines. 2026; 14(6):665.
https://doi.org/10.3390/machines14060665
Chicago/Turabian Style
Canseven, Hüseyin Tayyer, Mustafa Ercire, Merve Cömert, Abdurrahman Ünsal, and Nur Sarma.
2026. "Advanced Fault Detection of Permanent Magnet Faults in Offshore Wind Turbine Generators Using Finite Element Analysis and Deep Transfer Learning" Machines 14, no. 6: 665.
https://doi.org/10.3390/machines14060665
APA Style
Canseven, H. T., Ercire, M., Cömert, M., Ünsal, A., & Sarma, N.
(2026). Advanced Fault Detection of Permanent Magnet Faults in Offshore Wind Turbine Generators Using Finite Element Analysis and Deep Transfer Learning. Machines, 14(6), 665.
https://doi.org/10.3390/machines14060665
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