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Criticality Assessment of Wind Turbine Defects via Multispectral UAV Fusion and Fuzzy Logic

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  • Pavlo Radiuk

    (Faculty of Information Technologies, Khmelnytskyi National University, 11, Instytuts’ka Str., 29016 Khmelnytskyi, Ukraine)

  • Bohdan Rusyn

    (Department of Information Technologies of Remote Sensing, Karpenko Physico-Mechanical Institute of NAS of Ukraine, 79601 Lviv, Ukraine
    Faculty of Transport, Electrical Engineering and Computer Science, Casimir Pulaski Radom University, 29, Malczewskiego St., 26-600 Radom, Poland)

  • Oleksandr Melnychenko

    (Faculty of Information Technologies, Khmelnytskyi National University, 11, Instytuts’ka Str., 29016 Khmelnytskyi, Ukraine)

  • Tomasz Perzynski

    (Faculty of Transport, Electrical Engineering and Computer Science, Casimir Pulaski Radom University, 29, Malczewskiego St., 26-600 Radom, Poland)

  • Anatoliy Sachenko

    (Faculty of Transport, Electrical Engineering and Computer Science, Casimir Pulaski Radom University, 29, Malczewskiego St., 26-600 Radom, Poland
    Research Institute for Intelligent Computer Systems, West Ukrainian National University, 11, Lvivska Str., 46009 Ternopil, Ukraine)

  • Serhii Svystun

    (Faculty of Information Technologies, Khmelnytskyi National University, 11, Instytuts’ka Str., 29016 Khmelnytskyi, Ukraine)

  • Oleg Savenko

    (Faculty of Information Technologies, Khmelnytskyi National University, 11, Instytuts’ka Str., 29016 Khmelnytskyi, Ukraine)

Abstract

Ensuring the structural integrity of wind turbines is crucial for the sustainability of wind energy. A significant challenge remains in transitioning from mere defect detection to objective, scalable criticality assessment for prioritizing maintenance. In this work, we propose a novel comprehensive framework that leverages multispectral unmanned aerial vehicle (UAV) imagery and a novel standards-aligned Fuzzy Inference System to automate this task. Our contribution is validated on two open research-oriented datasets representing small on- and offshore machines: the public AQUADA-GO and Thermal WTB Inspection datasets. An ensemble of YOLOv8n models trained on fused RGB-thermal data achieves a mean Average Precision (mAP@.5) of 92.8% for detecting cracks, erosion, and thermal anomalies. The core novelty, a 27-rule Fuzzy Inference System derived from the IEC 61400-5 standard, translates quantitative defect parameters into a five-level criticality score. The system’s output demonstrates exceptional fidelity to expert assessments, achieving a mean absolute error of 0.14 and a Pearson correlation of 0.97. This work provides a transparent, repeatable, and engineering-grounded proof of concept, demonstrating a promising pathway toward predictive, condition-based maintenance strategies and supporting the economic viability of wind energy.

Suggested Citation

  • Pavlo Radiuk & Bohdan Rusyn & Oleksandr Melnychenko & Tomasz Perzynski & Anatoliy Sachenko & Serhii Svystun & Oleg Savenko, 2025. "Criticality Assessment of Wind Turbine Defects via Multispectral UAV Fusion and Fuzzy Logic," Energies, MDPI, vol. 18(17), pages 1-27, August.
  • Handle: RePEc:gam:jeners:v:18:y:2025:i:17:p:4523-:d:1732957
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