Single-drone energy efficient coverage path planning with multiple charging stations for surveillance

IF 2.2 Q1 MATHEMATICS, APPLIED
Atalay Celik, Enes Ustaomer, S. I. Satoglu
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引用次数: 0

Abstract

Drones have started to be used for surveillance within the cities, visually scanning the predefined zones, quickly detecting abnormal states such as fires, accidents, and pollution, or assessing the disaster zones. Coverage Path Planning (CPP) is a problem that aims to determine the most suitable path or motion plan for a vehicle to cover the entire desired area in the task. So, this paper proposes a novel two-dimensional coverage path planning (CPP) mathematical model with the fact that a single drone may need to be recharged within its route based on its energy consumption, and the obstacles must be avoided while constructing the route. Our study aims to create realistic routes for drones by considering multiple charging stations and obstacles for surveillance. We tested the model for a grid example based on the scenarios obtained by changing the layout, the number of obstacles and recharging stations, and area size using the Python Gurobi Optimization library. As a contribution, we analyzed the impact of the number of existing obstacles and recharging stations, the size and layout of the area to be covered on total energy consumption, and the total solution time of CPP in our study for the first time in the literature, through a detailed Scenario Analysis. Results show that the map size and the number of covered cells affect the total energy consumption, but different layouts with shuffled cells are not effective.  The area size to be covered affects the total computation time, significantly. As the number of obstacles and recharging stations increases, the computation time decreases up to a certain limit, then stabilizes.
单无人机节能覆盖路径规划与多个充电站进行监控
无人机已经开始用于城市内部的监视,通过视觉扫描预先确定的区域,快速发现火灾、事故、污染等异常状态,或评估灾区。覆盖路径规划(CPP)是一个旨在确定车辆在任务中覆盖整个期望区域的最合适路径或运动计划的问题。因此,本文提出了一种新的二维覆盖路径规划(CPP)数学模型,该模型考虑了单个无人机根据其能量消耗可能需要在其路线内充电,并且在构建路线时必须避开障碍物。我们的研究旨在通过考虑多个充电站和监视障碍物,为无人机创造现实的路线。基于改变布局、障碍物和充电站数量以及面积大小的场景,我们使用Python ruby Optimization库对网格示例模型进行了测试。作为贡献,我们通过详细的情景分析,在文献中首次分析了现有障碍物和充电站的数量,覆盖区域的大小和布局对总能耗和CPP总解决时间的影响。结果表明,地图大小和覆盖单元数对总能耗有影响,但不同布局的洗牌单元对总能耗影响不大。要覆盖的面积大小会显著影响总计算时间。随着障碍物和充电站数量的增加,计算时间减小到一定限度后趋于稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.30
自引率
6.20%
发文量
13
审稿时长
16 weeks
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