A Transmission Line Defect Detection Method Based on YOLOv7 and Multi-UAV Collaboration Platform

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Rong Chang, Peng Xiao, Hongqiang Wan, Songlin Li, Chengjiang Zhou, Fei Li
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引用次数: 0

Abstract

In order to prevent the economic losses caused by large-scale power outages and the life safety losses caused by circuit failures, the main purpose of this paper is to improve the efficiency, accuracy, and reliability of transmission line defect detection, and the main innovation is to propose a transmission line defect detection method based on YOLOv7 and the multi-UAV collaboration platform. First, a novel multi-UAV collaboration platform is proposed, which improved the search range and detection efficiency for defect detection. Second, YOLOv7 is used as a detector for multi-UAV collaboration platform, and several improvements improved the efficiency of defect detection under complex backgrounds. Finally, a complete transmission line defect images dataset is constructed, and the introduction of several defect images such as insulator self-blast and cracked insulators avoids the problem of low application value of single defect detection. The results indicate that the proposed method not only enhances the detection range and efficiency but also improves the detection accuracy. Compared with YOLOv5-S, which has good detection performance, YOLOv7 improves accuracy by 1.2%, recall by 4.3%, and mAP by 4.1%, and YOLOv7-Tiny achieves the fastest speed 1.2 ms and the smallest size 11.7 Mb. Even if the images contain complex backgrounds and noises, a mAP of 0.886 can still be obtained. Therefore, the proposed method provides effective support for transmission line defect detection and has broad application scenarios and development prospects.
基于YOLOv7和多无人机协同平台的传输线缺陷检测方法
为了防止大规模停电造成的经济损失和电路故障造成的生命安全损失,本文的主要目的是提高传输线缺陷检测的效率、准确性和可靠性,主要创新点是提出一种基于YOLOv7和多无人机协同平台的传输线缺陷检测方法。首先,提出了一种新型多无人机协同平台,提高了缺陷检测的搜索范围和检测效率;其次,将YOLOv7作为多无人机协同平台的探测器,通过若干改进提高了复杂背景下缺陷检测的效率。最后,构建完整的输电线路缺陷图像数据集,引入绝缘子自爆、绝缘子裂纹等多种缺陷图像,避免了单一缺陷检测应用价值低的问题。结果表明,该方法不仅提高了检测范围和效率,而且提高了检测精度。与具有较好检测性能的YOLOv5-S相比,YOLOv7的准确率提高了1.2%,召回率提高了4.3%,mAP提高了4.1%,而YOLOv7- tiny的速度最快,为1.2 ms,大小最小,为11.7 Mb,即使图像中包含复杂的背景和噪声,mAP也能达到0.886。因此,该方法为输电线路缺陷检测提供了有效支持,具有广阔的应用场景和发展前景。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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