High-risk areas identification of transmission lines based on historical warning information

Fei Wang, Lingqi Kong
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Abstract

With the upgrade of transmission line maintenance technology, the visual remote inspection of transmission line channel is widely used. However, the application of these marked data is currently in the stage of statistical analysis and report form, a deeper data mining work has not been carried out, such as the identification of areas with high incidence of alarm. This paper presents a method of analysis of high risk area of transmission line channel based on historical early warning data, which can be applied to the field of transmission line maintenance. By preprocessing the transmission line visual alarm data, using the improved k-means algorithm, analyze the clustering results, and finding out the series of modeling and data analysis. In addition, when determining the initial points, we propose the maximum and minimum longitude and latitude coordinates of the alarm dataset, divide a certain number of longitude and latitude grid, obtain the candidate data within each grid, and the method of obtaining the initial point set after screening. Based on the initial point set, the alarm area distribution is reasonable, and the regional stability does not drift. This paper can identify the visual alarm data of transmission lines with high alarm incidence areas, and provide effective data support for maintenance personnel to guide the deployment of human resources and ensure the safe operation of transmission lines.
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基于历史预警信息的输电线路高危区域识别
随着输电线路维护技术的不断升级,输电线路通道的目视远程巡检得到了广泛的应用。但是,对这些标记数据的应用目前还处于统计分析和报表的阶段,还没有开展更深层次的数据挖掘工作,比如对报警高发区域的识别。本文提出了一种基于历史预警数据的输电线路通道高风险区域分析方法,该方法可应用于输电线路维护领域。通过对传输线视觉报警数据进行预处理,采用改进的k-means算法,对聚类结果进行分析,找出一系列的建模和数据分析。此外,在确定初始点时,我们提出报警数据集的最大和最小经纬度坐标,划分一定数量的经纬度网格,获得每个网格内的候选数据,以及筛选后获得初始点集的方法。在初始点集的基础上,报警区域分布合理,区域稳定性不漂移。本文可以识别出报警高发区域的输电线路可视报警数据,为维护人员指导人力资源部署,保障输电线路安全运行提供有效的数据支持。
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