基于MOEA/D的无人机群部署用于无线覆盖

Shanshan Lu, Xiao Zhang, Yu Zhou, Shilong Sun
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引用次数: 1

摘要

近年来,无人机作为飞基站被广泛应用,为地面用户提供无线覆盖服务。由于无人机的电池容量和覆盖范围有限,研究人员对其能量消耗或覆盖范围进行了探索。然而,现有的研究在很大程度上忽略了优化无人机群部署以实现地面区域无线覆盖的权衡。本研究将同构无人机部署在三维空间中,以提供可持续的无线服务作为一个多目标问题。我们引入了三个目标:1)最小化部署无人机到值班无人机时的总能耗,2)最小化无人机数量,3)最大化目标区域的覆盖率。为了在这些目标之间实现更好的权衡,我们采用了MOEA/D框架,该框架允许搜索进度与相邻子问题相互协作。特别地,我们引入了单元组编码方案和遗传算子(即选择、交叉和突变)来生成可行的最优解。仿真结果表明,该算法是有效的,优于改进的SPEA II和NSGA II,表明该方法在解决无人机部署多目标优化问题上是可靠的。
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MOEA/D based UAV swarm deployment for wireless coverage
In recent years, unmanned aerial vehicles (UAVs) have been widely used as flying-based stations to provide wireless coverage services to ground users. Owing to the UAV’s limited battery capacity and coverage range, its energy consumption or coverage have been explored by researchers. However, the existing research largely overlooks the tradeoff involved in optimizing UAV swarm deployment for wireless coverage over a ground area. This study considers homogeneous UAV deployment in a 3D space to provide sustainable wireless services as a multi-objective problem. We introduce three objectives: 1) minimize the total energy consumption while deploying a UAV to UAVs on duty, 2) minimize the number of UAVs, and 3) maximize the coverage rate of the target area. With the aim of achieving a better trade-off between these objectives, we adopt the framework of MOEA/D, which allows search progress cooperating with neighboring subproblems each other. Particularly, we introduce a single-tuple encoding scheme and genetic operators (i.e., selection, crossover, and mutation) to generate feasible optimal solutions. The simulations demonstrate that the proposed algorithm is effective and surpasses the improved SPEA II and NSGA II, which indicates that the approach is dependable in solving the proposed multi-objective optimization for UAV deployment.
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