Extending Cell Tower Coverage through Drones

Ashutosh Dhekne, Mahanth K. Gowda, Romit Roy Choudhury
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引用次数: 27

Abstract

This paper explores a future in which drones serve as extensions to cellular networks. Equipped with a WiFi interface and a (LTE/5G) backhaul link, we envision a drone to fly in and create a WiFi network in a desired region. Analogous to fire engines, these drones can offer on-demand network service, alleviating unpredictable problems such as sudden traffic hotspots, poor coverage, and natural disasters. While realizing such a vision would need various pieces to come together, we focus on the problem of "drone placement". We ask: when several scattered users demand cellular connectivity in a particular area, where should the drone hover so that the aggregate demands are optimally satisfied? This is essentially a search problem, i.e., the drone needs to determine a 3D location from which its SNR to all the clients is maximized. Given the unknown environmental conditions (such as multipath, wireless shadows, foliage, and absorption), it is not trivial to predict the best hovering location. We explore the possibility of using RF ray tracing as a hint to narrow down the scope of search. Our key idea is to use 3D models from Google Earth to roughly model the terrain of the region, and then simulate how signals would scatter from the drone to various clients. While such simulations offer coarse-grained results, we find that they can still be valuable in broadly guiding the drone in the right direction. Once the drone has narrowed down the 3D search space, it can then physically move to quickly select the best hovering location. Measurement results from a WiFi mounted drone, communicating with 7 clients scattered in the UIUC campus, are encouraging. Our early prototype, DroneNet, reports 44% throughput gain with only 10% measurement overhead compared to a full scan of the entire region.
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通过无人机扩展蜂窝塔的覆盖范围
本文探讨了无人机作为蜂窝网络扩展的未来。配备WiFi接口和(LTE/5G)回程链路,我们设想一架无人机可以在理想区域飞行并创建WiFi网络。类似于消防车,这些无人机可以提供按需网络服务,缓解突发交通热点、覆盖率低和自然灾害等不可预测的问题。虽然实现这样的愿景需要各个部分结合在一起,但我们专注于“无人机放置”的问题。我们的问题是:当几个分散的用户在特定区域要求蜂窝连接时,无人机应该在哪里悬停,以最佳地满足总需求?这本质上是一个搜索问题,也就是说,无人机需要确定一个3D位置,从它到所有客户端的信噪比是最大化的。考虑到未知的环境条件(如多路径、无线阴影、树叶和吸收),预测最佳悬停位置并非易事。我们探索使用射频射线追踪作为提示缩小搜索范围的可能性。我们的关键想法是使用谷歌地球上的3D模型来大致模拟该地区的地形,然后模拟信号如何从无人机散射到不同的客户端。虽然这样的模拟提供了粗粒度的结果,但我们发现它们仍然可以在正确的方向上广泛地指导无人机。一旦无人机缩小了3D搜索范围,它就可以进行物理移动,快速选择最佳悬停位置。一架安装了WiFi的无人机与分布在UIUC校园内的7个客户端进行了通信,其测量结果令人鼓舞。我们的早期原型DroneNet报告说,与对整个区域进行全面扫描相比,只需要10%的测量开销,就可以获得44%的吞吐量提升。
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