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Identification and Localization of Wind Turbine Blade Faults Using Deep Learning

M. R. Davis, Edwin Nazario Dejesus, Mohammad Shekaramiz, J. Zander, Majid Memari

2024Applied Sciences17 citationsDOIOpen Access PDF

Abstract

This study addresses the challenges inherent in the maintenance and inspection of wind turbines through the application of deep learning methodologies for fault detection on Wind Turbine Blades (WTBs). Specifically, this research focuses on defect detection on the blades of small-scale WTBs due to the unavailability of commercial wind turbines. This research compared popular object localization architectures, YOLO and Mask R-CNN, to identify the most effective model to detect common WTB defects, including cracks, holes, and erosion. YOLOv9 C emerged as the most effective model, with the highest scores of mAP50 and mAP50-95 of 0.849 and 0.539, respectively. Modifications to Mask R-CNN, specifically integrating a ResNet18-FPN network, reduced computational complexity by 32 layers and achieved a mAP50 of 0.8415. The findings highlight the potential of deep learning and computer vision in improving WTB fault analysis and inspection.

Topics & Concepts

UnavailabilityTurbineDeep learningWind powerArtificial intelligenceFault (geology)Identification (biology)Research ObjectComputer scienceTurbine bladeEngineeringMarine engineeringReliability engineeringAutomotive engineeringMechanical engineeringElectrical engineeringGeologySeismologyRegional scienceBiologyBotanyGeographyIndustrial Vision Systems and Defect DetectionAdvanced Neural Network ApplicationsNon-Destructive Testing Techniques
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