Unmanned Aerial Vehicles (UAVs) are emerging as important users of next-generation cellular networks. By operating in the sky, UAV users experience very different radio conditions than terrestrial users, due to factors such as strong Line-of-Sight (LoS) channels (and interference) and Base Station (BS) antenna misalignment. As a consequence, the UAVs may experience significant degradation to their received quality of service, particularly when they are moving and are subject to frequent handovers. The solution is to allow the UAV to be aware of its surrounding environment, and intelligently connect into the cellular network taking advantage of this awareness. In this paper we present REgression and deep Q-learning for Intelligent UAV cellular user to Base station Association (REQIBA), a solution that allows a UAV flying over an urban area to intelligently connect to underlying BSs, using information about the received signal powers, the BS locations, and the surrounding building topology. We demonstrate how REQIBA can as much as double the total UAV throughput, when compared to heuristic association schemes similar to those commonly used by terrestrial users. We also evaluate how environmental factors such as UAV height, building density, and throughput loss due to handovers impact the performance of our solution.
翻译:无人驾驶飞行器(UAVs)正在成为下一代蜂窝网络的重要用户。无人驾驶飞行器(UAVs)正在成为下一代蜂窝网络的重要用户。无人驾驶飞行器(UAVs)在空中运行,其无线电条件与地面用户有很大不同,原因是视觉线(LOS)频道(和干扰)和基地站天线不匹配等因素。因此,无人驾驶飞行器(BS)的服务质量可能严重下降,特别是在它们移动时和频繁交接的情况下。解决办法是让UAVs了解其周围环境,并利用这一认识与蜂窝网络的智能连接。在本文件中,我们介绍了对智能型UAV蜂窝用户至基地站协会(REIBA)的反射和深度学习,这一解决方案使飞越城市地区的无人驾驶飞行器能够与基本的BS系统进行智能连接,同时利用所接收的信号力量、BS位置和周围建筑地形表的信息。我们证明REQIBA可以将UAV的总数增加一倍,而与UAV的高密度组合计划相比,我们通过地面用户通常使用的高密度转换的方式,我们又评估了如何将UAV的高度损失作为结果。