卞建鹏, 李凡, 郝培旭, 李亚敏, 孙晓云. 复杂环境下输电线路绝缘子的破损识别与定位[J]. 高电压技术, 2022, 48(2): 681-688. DOI: 10.13336/j.1003-6520.hve.20201766
引用本文: 卞建鹏, 李凡, 郝培旭, 李亚敏, 孙晓云. 复杂环境下输电线路绝缘子的破损识别与定位[J]. 高电压技术, 2022, 48(2): 681-688. DOI: 10.13336/j.1003-6520.hve.20201766
BIAN Jianpeng, LI Fan, HAO Peixu, LI Yamin, SUN Xiaoyun. Damage Identification and Location of Transmission Line Insulator in Complex Environment[J]. High Voltage Engineering, 2022, 48(2): 681-688. DOI: 10.13336/j.1003-6520.hve.20201766
Citation: BIAN Jianpeng, LI Fan, HAO Peixu, LI Yamin, SUN Xiaoyun. Damage Identification and Location of Transmission Line Insulator in Complex Environment[J]. High Voltage Engineering, 2022, 48(2): 681-688. DOI: 10.13336/j.1003-6520.hve.20201766

复杂环境下输电线路绝缘子的破损识别与定位

Damage Identification and Location of Transmission Line Insulator in Complex Environment

  • 摘要: 输电线路中绝缘子背景复杂,传统的故障识别算法存在如绝缘子的误检、漏检以及识别率低等弊端。相比传统卷积神经网络,胶囊网络(capsule network, CapsNet)首次采用矢量作为输入,可以保留目标的方向、角度等特征信息,更适合识别复杂背景下的绝缘子。为此提出了一种基于胶囊网络与YOLO文本定位相结合的绝缘子破损识别算法,通过将传统胶囊网络卷积层9×9的卷积核简化为3×3的卷积核,并通过遗传算法和随机梯度下降法对权重进行寻优,缩短了训练时间,而且使输出量能够保留绝缘子的角度与方向,因此可以在复杂环境下对故障绝缘子进行准确识别;同时应用YOLO的文本定位算法对绝缘子破损部位进行尺寸矫正,得到更精确的绝缘子破损位置。最后与AlexNet、YOLOv2、Faster R-CNN识别算法进行了对比,该方法的绝缘子识别率提高到了95%,从而可以更快速、准确的在复杂环境下识别并精确定位绝缘子破损位置。

     

    Abstract: Due to the complex background of insulators in transmission lines, traditional fault identification algorithms have problems such as false detection, missing detection and low recognition rate. Compared with the traditional convolution neural network, capsule network uses vector as input for the first time, which can well retain the direction, angle and other characteristic information of the target, and is more suitable for identifying insulator in complex background. Therefore, this paper proposes an insulator damage identification algorithm based on the combination of capsule network and Yolo text location. The convolution kernel of traditional capsule network convolution layer and main capsule layer is simplified to 3×3 convolution kernel, and the weight is optimized by genetic algorithm and random gradient descent method, which shortens the training time and keeps the angle and direction of insulator. Therefore, the faulty insulator can be identified in complex environment; at the same time, the YOLO's text location algorithm is used to correct the size of the damaged part of the insulator to get a more accurate location of the broken insulator. Finally, compared with AlexNet, YOLOV2, Fast R-CNN recognition algorithms, the insulator recognition rate of the proposed method is increased to 95%, so that the insulator can be identified more quickly and accurately from the complex background, and the speed and accuracy of identifying insulator and accurately locating the damaged position of insulator under complex background are improved.

     

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