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首页> 外文期刊>IEEE transactions on wireless communications >Learn-As-You-Fly: A Distributed Algorithm for Joint 3D Placement and User Association in Multi-UAVs Networks
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Learn-As-You-Fly: A Distributed Algorithm for Joint 3D Placement and User Association in Multi-UAVs Networks

机译:快速学习:在多无人机网络中联合3D放置和用户关联的分布式算法

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In this paper, we propose a distributed algorithm that allows unmanned aerial vehicles (UAVs) to dynamically learn their optimal 3D locations and associate with ground users while maximizing the network's sum-rate. Our approach is referred to as 'Learn-As-You-Fly' (LAYF) algorithm. LAYF is based on a decomposition process that iteratively breaks the underlying optimization into three subproblems. First, given fixed 3D positions of UAVs, LAYF proposes a distributed matching-based association that alleviates the bottlenecks of bandwidth allocation and guarantees the required quality of service. Next, to address the 2D positions of UAVs, a modified version of K-means algorithm, with a distributed implementation, is adopted. Finally, in order to optimize the UAVs altitudes, we study a naturally defined game-theoretic version of the problem and show that under fixed UAVs 2D coordinates, a predefined association scheme, and limited interference, the UAVs altitudes game is a potential game where UAVs can maximize the limited interference sum-rate by only optimizing a local utility function. Our simulation results show that the network's sum-rate is improved as compared to both a centralized suboptimal solution and a distributed approach that is based on closest UAVs association.
机译:在本文中,我们提出了一种分布式算法,该算法允许无人机(UAV)动态学习其最佳3D位置并与地面用户相关联,同时最大化网络的总速率。我们的方法称为“即时学习”(LAYF)算法。 LAYF基于分解过程,该过程将基础优化迭代地分为三个子问题。首先,考虑到无人机的固定3D位置,LAYF提出了一种基于匹配的分布式关联,以减轻带宽分配的瓶颈并保证所需的服务质量。接下来,为了解决无人机的2D位置,采用了具有分布式实现的K-means算法的改进版本。最后,为了优化无人机的高度,我们研究了问题的自然定义的博弈论版本,并显示了在固定的无人机2D坐标,预定义的关联方案和有限的干扰下,无人机的高海拔游戏是无人机的潜在游戏仅通过优化本地效用函数就可以最大化受限干扰总和。我们的仿真结果表明,与集中式次优解决方案和基于最接近的无人机关联的分布式方法相比,网络的总和率得到了改善。

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