湖南电力 ›› 2026, Vol. 46 ›› Issue (2): 140-148.doi: 10.3969/j.issn.1008-0198.2026.02.018

• 电力规划与市场 • 上一篇    下一篇

基于改进YOLOv8n的输电线路绝缘子缺陷识别算法研究

邝春艳, 罗日成, 周旋, 王正富, 王淏   

  1. 长沙理工大学电气与信息工程学院,长沙 410114
  • 收稿日期:2025-10-11 修回日期:2025-11-24 出版日期:2026-04-25 发布日期:2026-05-09
  • 通信作者: 罗日成(1969),男,教授,主要从事电力系统过电压及防雷接地技术、电力设备在线监测及故障诊断等方面的研究工作。
  • 作者简介:邝春艳(2000),女,硕士研究生,主要从事电力设备状态评估与故障诊断方面的研究工作。
  • 基金资助:
    湖南省自然科学基金项目(2025JJ60327);湖南省教育厅科研基金项目(23A0240)

Research on insulator Defects identifying Algorithm in Transmission Lines Based on improved YOLOv8n

KUANG Chunyan, LUO Richeng, ZHOU Xuan, WANG Zhengfu, WANG Hao   

  1. Changsha University of Science & Technology, School of Electrical and information Engineering, Changsha 410114, China
  • Received:2025-10-11 Revised:2025-11-24 Online:2026-04-25 Published:2026-05-09

摘要: 为了平衡输电线路绝缘子缺陷识别算法的精度与复杂度,提出一种基于YOLOv8n的高精度轻量化识别算法。首先,构建多尺度坐标注意力(multi-scale coordinate attention,MSCA),并融合上下文感知模块(csp bottleneck with 2 convolutions,C2f)成为C2f_MSCA模块,替换主干网络C2f模块,以提高主干网络的特征提取能力;然后,引入轻量级渐近特征金字塔网络和深度可分离卷积对其进行轻量化,采用CA注意力增强重要特征的关注;颈部网络融合小目标特征层P2,并在主干网络移除冗余高层特征P5,进一步降低模型复杂度,同时加强对小目标的提取能力;引入空间到深度卷积块,弥补移除P5层带来的精度损失。最后,设计差异化组件式调制角度感知交并比损失函数替换YOLOv8n的完全交并比损失函数,动态调节惩罚策略,优化置信度损失。研究结果表明:该识别算法对绝缘子本体和3种不同绝缘子缺陷的交并比阈值为0.5时的均值平均精度达到了96.04%,相较于基准模型YOLOv8n提升了3.59个百分点,参数量降低了29.5%,达到精度与复杂度的平衡,可为边缘端部署目标检测模型提供参考。

关键词: YOLOv8n, 绝缘子缺陷, 小目标, LightAfPN, SioU, 边缘端

Abstract: To balance the accuracy and complexity of transmission line insulator defect detection algorithms, a high-precision lightweight detection algorithm based on YOLOv8n is proposed. first, the C2f_MSCA module is constructed by embedding multi-scale coordinate attention(MSCA) into the csp bottleneck with 2 convolutions(C2f) module, replacing it in the backbone network to enhance feature extraction capabilities. Then, light symptotic feature pyramid network(LightAfPN) is introduced and optimized with depthwise separable convolution(DSConv) and CA for lightweight operation and improved attention to critical features. The neck network integrates the small target feature layer P2 while removing the redundant high-level feature P5 from the backbone, further reducing model complexity and enhancing small target extraction. The space to depth convolution(SPDConv) is introduced to compensate for the accuracy loss resulting from the removal of the P5 layer. finally, the differentiated component-wise modulated scylla-ioU(DCM-SioU) is designed to replace YOLOv8n's complete intersection over union(CioU), dynamically adjusting the penalty strategy during different training phases to optimize confidence loss. Experimental results show that the recognition model has achieved an average accuracy of 96.04% for the intersection to union ratio threshold of 0.5 for the insulator body and three different insulator defects. Compared with the benchmark model YOLOv8n, it improves by 3.59 percentage points and reduces the number of parameters by 29.5%, achieving a balance between model accuracy and complexity. This can provide reference for deploying object detection models at the edge.

Key words: YOLOv8n, insulator defects, small goals, LightAfPN, SioU, edge end

中图分类号: