Department of Computer Science, Faculty of Electrical Engineering, Automatic Control and Informatics, Opole University of Technology, Prószkowska 76 St., 45-758 Opole, Poland.
Sensors (Basel). 2023 Mar 22;23(6):3343. doi: 10.3390/s23063343.
Proper maintenance of the electricity infrastructure requires periodic condition inspections of power line insulators, which can be subjected to various damages such as burns or fractures. The article includes an introduction to the problem of insulator detection and a description of various currently used methods. Afterwards, the authors proposed a new method for the detection of the power line insulators in digital images by applying selected signal analysis and machine learning algorithms. The insulators detected in the images can be further assessed in depth. The data set used in the study consists of images acquired by an Unmanned Aerial Vehicle (UAV) during its overflight along a high-voltage line located on the outskirts of the city of Opole, Opolskie Voivodeship, Poland. In the digital images, the insulators were placed against different backgrounds, for example, sky, clouds, tree branches, elements of power infrastructure (wires, trusses), farmland, bushes, etc. The proposed method is based on colour intensity profile classification on digital images. Firstly, the set of points located on digital images of power line insulators is determined. Subsequently, those points are connected using lines that depict colour intensity profiles. These profiles were transformed using the Periodogram method or Welch method and then classified with Decision Tree, Random Forest or XGBoost algorithms. In the article, the authors described the computational experiments, the obtained results and possible directions for further research. In the best case, the proposed solution achieved satisfactory efficiency ( = 0.99). Promising classification results indicate the possibility of the practical application of the presented method.
电力基础设施的正确维护需要定期对输电线绝缘子进行状态检查,绝缘子可能会受到各种损坏,如烧伤或断裂。本文介绍了绝缘子检测的问题,并描述了目前使用的各种方法。之后,作者提出了一种新的方法,通过应用选定的信号分析和机器学习算法,在数字图像中检测电力线绝缘子。可以对图像中检测到的绝缘子进行进一步深入评估。本研究使用的数据集由一架无人机(UAV)在飞越波兰奥波莱省奥波莱市郊外的高压线路时获取的图像组成。在数字图像中,绝缘子被放置在不同的背景下,例如天空、云彩、树枝、电力基础设施元件(电线、桁架)、农田、灌木等。所提出的方法基于数字图像上的颜色强度轮廓分类。首先,确定位于输电线绝缘子数字图像上的点集。然后,使用描绘颜色强度轮廓的线连接这些点。使用周期图法或 Welch 法对这些轮廓进行变换,然后使用决策树、随机森林或 XGBoost 算法对其进行分类。在文章中,作者描述了计算实验、获得的结果以及进一步研究的可能方向。在最佳情况下,所提出的解决方案达到了令人满意的效率(=0.99)。有希望的分类结果表明,所提出的方法具有实际应用的可能性。