基于改进YOLOv5s的光伏组件缺陷检测

Shuwei Xu, Huimin Qian, Wenyu Shen, Fangzheng Wang, Xiquan Liu, Zhangjin Xu
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引用次数: 0

摘要

裂纹和碎片是光伏组件常见的缺陷,两者都会导致光伏发电的严重退化。传统的故障诊断方法难以准确定位光伏组件的缺陷区域。本文提出了一种改进的YOLOv5s,用于实现电致发光(EL)图像中光伏组件的裂纹和碎片检测。具体而言,在402张EL图像的基础上,通过图像预处理和数据增强,构建缺陷图像数据集。结合视觉注意机制,分别提出了一种新的跨阶段局部操作单元C3_cbam和一种新的空间金字塔池化操作单元SPP_eca。其中,提出C3_cbam,在YOLOv5s中开发C3_1单元,通过结合空间和信道信息,帮助网络聚焦图像中的关键区域。SPP_eca是对SPP单元的改进,通过增强信道注意来减少混叠效应。实验结果表明,在构建的缺陷图像数据集上,本文算法的mAP值达到0.923,与原来的YOLOv5s算法相比,准确率提高了3.3%。与其他先进的缺陷检测算法相比,该算法也表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defect detection for PV Modules based on the improved YOLOv5s
Cracks and fragments are common defects of photovoltaic (PV) modules, both of which can lead to severe degradation of PV power generation. Traditional fault diagnosis methods are difficult to accurately locate the defect regions in PV modules. In this paper, a developed YOLOv5s is proposed to achieve cracks and fragments detection of PV modules in the electroluminescent (EL) images. More Specific, a defect image dataset is constructed based on image preprocessing and data augmentation on 402 EL images. And a novel cross stage partial operation unit named C3_cbam and a novel spatial pyramidal pooling operation unit named SPP_eca are proposed respectively by combining with visual attention mechanism. Among which, C3_cbam is presented to develop C3_1 unit in YOLOv5s to help the network focus on critical regions in the image by incorporating spatial and channel information. SPP_eca is the improvement of SPP unit by enhancing channel attention to reduce the aliasing effects. The experiment results illustrate that the proposed algorithm achieves 0.923 mAP on the constructed defect image dataset, which has an accuracy increment of 3.3% compared with the original YOLOv5s algorithm. The algorithm also performs well compared to other state-of-art defect detection algorithms.
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