IET Generation, Transmission & Distribution (Jun 2023)

Bird pecking damage risk assessment of UHV transmission line composite insulators based on deep learning

  • Yujiao Zhang,
  • Hongda Sun,
  • Houxu Li,
  • Donglian Qi,
  • Yunfeng Yan,
  • Zhiwei Chen,
  • Xiongfeng Huang

DOI
https://doi.org/10.1049/gtd2.12853
Journal volume & issue
Vol. 17, no. 12
pp. 2788 – 2798

Abstract

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Abstract Here, a method for assessing the risk of bird pecking damage of composite insulators in ultra high voltage (UHV) lines is proposed using electric field (E‐field) simulation and deep learning. The distribution of E‐field on composite insulators is analysed via numerical simulation for different damage locations and damage sizes. Then, using the defective images of composite insulator strings captured in real inspection environments, the corresponding annotation image data set is constructed according to the finite element calculation results of E‐field under different damage conditions, and through the application of the YOLOX deep learning neural network, the risk assessment of the damage caused by bird pecking of insulators for UHV lines is conducted. Furthermore, to prevent overfitting of YOLOX with small‐scale images, transfer learning, as well as data enhancement, are applied to the YOLOX training process. According to the results, the mean average precision (mAP) of the model is 0.79, indicating that it is capable of high accuracy recognition, provides guidance for operation and maintenance personnel.

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