Детектирование дефектов неисправных элементов линий электропередач при помощи нейронных сетей семейства YOLO
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Detection of defects in faulty elements of power lines using neural networks of YOLO

idAstapova M.A. idUzdiaev M.Y.

UDC 621.3.051; 004.032.26
DOI: 10.26102/2310-6018/2021.35.4.035

  • Abstract
  • List of references
  • About authors

Currently, visual state diagnostics of power transmission lines (PTL) elements is a complex and time-consuming procedure. In order to increase the efficiency and reduce the labor costs of this undertaking, the most promising measure is the use of unmanned aerial vehicles equipped with computer vision systems that automatically detect damaged elements of power lines. For the purposes of improving the detection quality of power lines damaged areas by computer vision systems, the application of modern deep neural network architectures would be most effective. However, the problem of utilizing such architectures in the aforementioned task is not sufficiently covered in modern research. The issue of comparing various neural networks and identifying substantial differences in their results is especially acute. This article is devoted to a comparative analysis of modern neural network detectors YOLOv3 and YOLOv4 as well as their reduced versions (YOLOv3-tiny and YOLOv4-tiny) in terms of detecting power transmission line defects. The results of training these detectors on the CPLID dataset are presented along with statistical comparison of the YOLOv3 and YOLOv4 results by means of the cross-validation procedure. The detectors displayed high rates of detection accuracy (mAP @ 0.50 = 0.97 ± 0.03; mAP @ 0.75 = 0.78 ± 0.04) and statistically significant distinctions in these results. A comparative analysis of the findings has revealed that the employment of a simpler neural network YOLOv3 has more potential when applied to detection of power transmission line defects.

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Astapova Marina Alekseevna

ORCID |

St. Petersburg Federal Research Center of the Russian Academy of Sciences

Saint-Petersburg, Russian Federation

Uzdiaev Mikhail Yurievich

ORCID |

St. Petersburg Federal Research Center of the Russian Academy of Sciences

Saint-Petersburg, Russian Federation

Keywords: unmanned aerial vehicle, inspection of high-voltage power lines, fault detection, defect detection, neural networks, YOLOv3, YOLOv4

For citation: Astapova M.A. Uzdiaev M.Y. Detection of defects in faulty elements of power lines using neural networks of YOLO. Modeling, Optimization and Information Technology. 2021;9(4). Available from: https://moitvivt.ru/ru/journal/pdf?id=1115 DOI: 10.26102/2310-6018/2021.35.4.035 (In Russ).

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Full text in PDF

Received 17.12.2021

Revised 24.12.2021

Accepted 26.12.2021

Published 30.12.2021