Pei Shaotong, Wang Weiqi, Wu Peng, Hu Chenlong, Sun Haichao, Li Keyu, Wu Mianxiao, Lan Bo
Hebei Provincial Key Laboratory of Power Transmission Equipment Security Defense, North China Electric Power University, 619 Yonghuabei Street, Baoding City, People's Republic of China.
Sci Rep. 2025 Mar 20;15(1):9673. doi: 10.1038/s41598-025-92696-0.
Thanks to the rapid development of image processing technology, the efficiency and accuracy of power inspection have been enhanced through deep learning techniques. However, during on-site inspections, the complexity of the background images of composite insulators often makes it difficult to directly extract key features for accurately assessing hydrophobicity levels. Moreover, considering the real-time requirements for insulator hydrophobicity detection in practical operations, the model must be lightweight to speed up the detection process. To address this issue, this paper proposes a YOLO algorithm for the precise detection of composite insulator hydrophobicity. The algorithm integrates a high-performance GPU network (HGNetv2), a mixed local channel attention mechanism (MLCA), lightweight convolution (CSPPC), and the Inner-WIoU loss function, significantly reducing the network's burden and improving the accuracy of recognizing composite insulator sheds and classifying their hydrophobicity levels. By adopting a strategy of identifying insulator sheds and then classifying their hydrophobicity levels, precise detection of hydrophobicity is achieved. Experimental results show that the proposed AHC-YOLO algorithm has increased the detection accuracy of sheds by 5.77%, with GFLOPs reduced to 5.8. In the task of classifying hydrophobicity levels, the Top-1 accuracy has been improved by 4.994%, with GFLOPs reduced to 1.9. These achievements not only meet the needs for the detection and classification of composite insulator hydrophobicity but also further demonstrate the effectiveness and superiority of the algorithm through ablation and comparative experiments.
得益于图像处理技术的快速发展,通过深度学习技术提高了电力巡检的效率和准确性。然而,在现场巡检过程中,复合绝缘子背景图像的复杂性常常使得难以直接提取关键特征以准确评估憎水等级。此外,考虑到实际操作中绝缘子憎水检测的实时性要求,模型必须轻量化以加快检测过程。为解决这一问题,本文提出一种用于精确检测复合绝缘子憎水的YOLO算法。该算法集成了高性能GPU网络(HGNetv2)、混合局部通道注意力机制(MLCA)、轻量化卷积(CSPPC)和Inner-WIoU损失函数,显著减轻了网络负担,提高了识别复合绝缘子伞裙及其憎水等级分类的准确性。通过采用先识别绝缘子伞裙再对其憎水等级进行分类的策略,实现了憎水的精确检测。实验结果表明,所提出的AHC-YOLO算法使伞裙检测准确率提高了5.77%,GFLOPs降至5.8。在憎水等级分类任务中,Top-1准确率提高了4.994%,GFLOPs降至1.9。这些成果不仅满足了复合绝缘子憎水检测和分类的需求,还通过消融实验和对比实验进一步证明了该算法的有效性和优越性。