论文标题
可持续的无线服务,其无人机群为可再生能源量身定制
Sustainable Wireless Services with UAV Swarms Tailored to Renewable Energy Sources
论文作者
论文摘要
在离网场景中,通常需要无人驾驶飞机(UAV)群,例如灾难,饱受战争折磨或农村地区,无人机无法获得电网,而是依靠可再生能源。考虑到来自两个可再生资源的主要电池,风能和太阳能,我们根据财务预算,环境特征和季节性变化扩展这样的系统。有趣的是,能源的来源与无人机的能量消耗相关,因为强风会导致无人机徘徊变得越来越耗能能源。目的是在特定位置最大化覆盖范围的成本效率,这是在非凸标准下多元能源产生系统尺寸的组合优化问题。我们通过降低处理复杂性并通过采样来降低解决方案空间来设计一种自定义的算法。通过供应商提供的价格驱动的关于风,太阳能和单位区域的风能,太阳能和交通负荷的现实世界数据进行评估。该实施在四个位置进行了测试,其风强度不同。最佳的结果是在温和的风能和强烈的太阳照射的位置取得了最佳成果,而强风和低太阳强度的位置需要更高的资本支出(CAPEX)分配。
Unmanned Aerial Vehicle (UAV) swarms are often required in off-grid scenarios, such as disaster-struck, war-torn or rural areas, where the UAVs have no access to the power grid and instead rely on renewable energy. Considering a main battery fed from two renewable sources, wind and solar, we scale such a system based on the financial budget, environmental characteristics, and seasonal variations. Interestingly, the source of energy is correlated with the energy expenditure of the UAVs, since strong winds cause UAV hovering to become increasingly energy-hungry. The aim is to maximize the cost efficiency of coverage at a particular location, which is a combinatorial optimization problem for dimensioning of the multivariate energy generation system under non-convex criteria. We have devised a customized algorithm by lowering the processing complexity and reducing the solution space through sampling. Evaluation is done with condensed real-world data on wind, solar energy, and traffic load per unit area, driven by vendor-provided prices. The implementation was tested in four locations, with varying wind or solar intensity. The best results were achieved in locations with mild wind presence and strong solar irradiation, while locations with strong winds and low solar intensity require higher Capital Expenditure (CAPEX) allocation.