A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection

Abstract Accurately and rapidly detecting damage to wind turbine blades is critical for ensuring the safe operation of wind turbines. Current deep learning-based detection methods predominantly employ the gathered blade images directly for damage detection. However, due to the slender geometry of wi...

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Main Authors: Boyu Feng, Bo Liu, Li Song, Yongyan Chen, Xiaofeng Jiao, Baiqiang Wang
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-04882-9
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author Boyu Feng
Bo Liu
Li Song
Yongyan Chen
Xiaofeng Jiao
Baiqiang Wang
author_facet Boyu Feng
Bo Liu
Li Song
Yongyan Chen
Xiaofeng Jiao
Baiqiang Wang
author_sort Boyu Feng
collection DOAJ
description Abstract Accurately and rapidly detecting damage to wind turbine blades is critical for ensuring the safe operation of wind turbines. Current deep learning-based detection methods predominantly employ the gathered blade images directly for damage detection. However, due to the slender geometry of wind turbine blades, non-blade background information accounts for a considerable proportion of the captured images with complex background features, affecting the detection of blade damage. To address this challenge, we propose a novel edge cropping method combined with an enhanced YOLOv5s network for detecting damage in wind turbine blades, termed Edge Crop and Enhanced YOLOv5 (EC–EY). The edge cropping method adaptively modifies the cropping stride by the edge features of both sides of the blade, thereby procuring image content that predominantly encompasses the blade region. This procedure effectively mitigates the interference from complex background features and augments the utilization of image pixels. Furthermore, the enhanced YOLOv5 network incorporates the global attention mechanism into the head section of the network and substitutes the original SPPF module with an attention-based intra-scale feature interaction module. The EC–EY aims to improve the detection accuracy for small and variable-shape damages in wind turbine blades. EC–EY achieved excellent performance on a dataset of wind turbine blade damage collected in western Inner Mongolia. Notably, the edge cropping method significantly improves the accuracy of wind turbine blade damage detection.
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publishDate 2025-07-01
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spelling doaj-art-ae0a8b9f0f65425fadfdeda4080c4c7a2025-08-20T04:01:26ZengNature PortfolioScientific Reports2045-23222025-07-0115111710.1038/s41598-025-04882-9A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detectionBoyu Feng0Bo Liu1Li Song2Yongyan Chen3Xiaofeng Jiao4Baiqiang Wang5College of Energy and Power Engineering, Inner Mongolia University of TechnologyCollege of Data Science and Application, Inner Mongolia University of TechnologyCollege of Energy and Power Engineering, Inner Mongolia University of TechnologyCollege of Energy and Power Engineering, Inner Mongolia University of TechnologyInner Mongolia Power Science Research InstituteCollege of Energy and Power Engineering, Inner Mongolia University of TechnologyAbstract Accurately and rapidly detecting damage to wind turbine blades is critical for ensuring the safe operation of wind turbines. Current deep learning-based detection methods predominantly employ the gathered blade images directly for damage detection. However, due to the slender geometry of wind turbine blades, non-blade background information accounts for a considerable proportion of the captured images with complex background features, affecting the detection of blade damage. To address this challenge, we propose a novel edge cropping method combined with an enhanced YOLOv5s network for detecting damage in wind turbine blades, termed Edge Crop and Enhanced YOLOv5 (EC–EY). The edge cropping method adaptively modifies the cropping stride by the edge features of both sides of the blade, thereby procuring image content that predominantly encompasses the blade region. This procedure effectively mitigates the interference from complex background features and augments the utilization of image pixels. Furthermore, the enhanced YOLOv5 network incorporates the global attention mechanism into the head section of the network and substitutes the original SPPF module with an attention-based intra-scale feature interaction module. The EC–EY aims to improve the detection accuracy for small and variable-shape damages in wind turbine blades. EC–EY achieved excellent performance on a dataset of wind turbine blade damage collected in western Inner Mongolia. Notably, the edge cropping method significantly improves the accuracy of wind turbine blade damage detection.https://doi.org/10.1038/s41598-025-04882-9Wind turbine bladeDamage detectionEdge cropYOLOv5Canny
spellingShingle Boyu Feng
Bo Liu
Li Song
Yongyan Chen
Xiaofeng Jiao
Baiqiang Wang
A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
Scientific Reports
Wind turbine blade
Damage detection
Edge crop
YOLOv5
Canny
title A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
title_full A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
title_fullStr A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
title_full_unstemmed A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
title_short A novel edge crop method and enhanced YOLOv5 for efficient wind turbine blade damage detection
title_sort novel edge crop method and enhanced yolov5 for efficient wind turbine blade damage detection
topic Wind turbine blade
Damage detection
Edge crop
YOLOv5
Canny
url https://doi.org/10.1038/s41598-025-04882-9
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