基于YOLOv3网络的输电线路绝缘子自动识别与缺陷诊断

Yang Bao, Tian Chen
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引用次数: 1

摘要

绝缘子设备是电网输电线路的重要组成部分。它能在导线、横杆和塔之间起到良好的绝缘作用。绝缘子能否正常工作直接影响电网的稳定运行。为此,针对无人机或机器人采集的输电线路绝缘子图像,提出了一种基于YOLOv3网络的输电线路绝缘子在线识别与缺陷诊断模型。通过训练YOLOv3网络,学习并准确识别复杂背景下各种绝缘子的特征,并结合粒子滤波算法对各种状态下的绝缘子进行缺陷诊断。对输电线路巡检图像的仿真结果表明,所提出的绝缘子自动识别与缺陷诊断方法能够快速准确地从输电线路巡检图像中识别出绝缘子,并诊断出绝缘子是否损坏以及缺陷的位置,有利于提高输电线路的智能化巡检水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Identification and Defect Diagnosis of Transmission Line Insulators Based on YOLOv3 Network
Insulator equipment is an important part of the transmission line of the power grid. It can play a good insulation role among the conductor, the crossbar and the tower. Whether the insulator can work normally directly affects the stable operation of the power grid. To this end, for the transmission line insulator images acquired by drones or robots, an online recognition and defect diagnosis model of transmission line insulators based on YOLOv3 network is proposed. By training YOLOv3 network, the characteristics of various insulators under complex backgrounds are learned and accurately recognized, and combined with particle filter algorithm for defect diagnosis of insulators in various states. The simulation results of the transmission line inspection image show that the proposed automatic insulator identification and defect diagnosis method can quickly and accurately identify the insulator from the transmission line inspection image, and diagnose whether the insulator is damaged and the position of the defect, which is beneficial to improve the transmission line Intelligent inspection level.
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