Feng Boyu, Liu Bo, Song Li, Chen Yongyan, Jiao Xiaofeng, Wang Baiqiang
College of Energy and Power Engineering, Inner Mongolia University of Technology, Hohhot, 010051, China.
College of Data Science and Application, Inner Mongolia University of Technology, Hohhot, 010051, China.
Sci Rep. 2025 Jul 2;15(1):22777. doi: 10.1038/s41598-025-04882-9.
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.
准确快速地检测风力涡轮机叶片的损伤对于确保风力涡轮机的安全运行至关重要。当前基于深度学习的检测方法主要直接使用收集到的叶片图像进行损伤检测。然而,由于风力涡轮机叶片的几何形状细长,在具有复杂背景特征的捕获图像中,非叶片背景信息占相当大的比例,影响了叶片损伤的检测。为应对这一挑战,我们提出了一种新颖的边缘裁剪方法,并结合增强型YOLOv5s网络用于检测风力涡轮机叶片损伤,称为边缘裁剪与增强型YOLOv5(EC-EY)。边缘裁剪方法通过叶片两侧的边缘特征自适应地修改裁剪步长,从而获取主要包含叶片区域的图像内容。这一过程有效减轻了复杂背景特征的干扰,并增加了图像像素的利用率。此外,增强型YOLOv5网络在网络头部融入了全局注意力机制,并用基于注意力的尺度内特征交互模块替代了原来的SPPF模块。EC-EY旨在提高对风力涡轮机叶片中小尺寸和形状多变损伤的检测精度。EC-EY在内蒙古西部收集的风力涡轮机叶片损伤数据集上取得了优异的性能。值得注意的是,边缘裁剪方法显著提高了风力涡轮机叶片损伤检测的准确性。