无人机目标间导航提高电力线巡检的效率和精度

IF 0.3 Q4 ENERGY & FUELS
O. Tymochko, Vadym Fustii, A. Kolesnyk, S. Olizarenko, G. Kalashnyk, Ruslan Kulish, O. Tymoschuk, Dmytro Galinskyi
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引用次数: 1

摘要

本文的目的是为了提高无人机对电力线段进行故障检测的精度和效率。通过在多旋翼飞机和无人机上使用统一的计算和测量平台,简化它们之间的交互,并使用目标间导航传感器来实现目标。最重要的成果是开发了一种无人机在电网不同部分的路线规划方法和一种目标间导航方法。无人机路线规划问题由经典旅行商问题的多智能体变体表示,采用蚁群方法求解。通过高低强度图表示电网拓扑来区分目标间导航方法,在巡检过程中涉及不同数量和类型的无人机。该方法的应用使电力线检测精度提高了27-73%,效率提高了2-8倍。解决无人机编队飞行路线规划的多准则优化问题,在降低关键基础设施监控成本的同时,提高了监控效率和准确性。因此,所进行的研究表明,拟议的方法在监测电力设施、选择路线、搜索队的人数和组成方面是有效的。进一步的研究方向是改进蚁群算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-Object Navigation of Unmanned Aerial Vehicles to Increase the Efficiency and Accuracy of Inspection of Power Lines
The purpose of the work is to improve the accuracy and efficiency of a power line section inspection for a fault detection using unmanned aerial vehicles. The goal was achieved by using a unified computing and measurement platform on multicopter and aircraft drones and by simplifying the interaction between them and by using the inter-object navigation sensors. The most significant results were the development of a method of route planning by drones over different parts of the power grid and a method of inter-object navigation. The drone route planning problem was represented by a multiagent variation of the classical traveling salesman problem and was solved by the ant colony method. The method of inter-object navigation was distinguished by the representation of the power grid topology by high and low intensity graphs, involving a different number and types of drones in the inspection process. The application of the developed methods made it possible to increase the accuracy of power line inspections by 27-73%, and the efficiency by 2-8 times. Solving the problem of multicriteria optimization of the drone team flight route planning made it possible to reduce the cost of monitoring critical infrastructure facilities while improving its efficiency and accuracy. Thus, the conducted research has shown the effectiveness of the proposed approach for the monitoring of power facilities, route selection, number and composition of search teams. The direction for further research is to improve the ant algorithm.
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来源期刊
CiteScore
0.70
自引率
33.30%
发文量
38
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