论文标题

无人机蜂窝用户的智能基站协会:一种有监督的学习方法

Intelligent Base Station Association for UAV Cellular Users: A Supervised Learning Approach

论文作者

Galkin, Boris, Amer, Ramy, Fonseca, Erika, DaSilva, Luiz A.

论文摘要

预计第五代(5G)蜂窝网络将为包括无人机(无人机)在内的车辆使用者提供蜂窝连接。在空中飞行时,这些用户会在地面上遇到强大的,无障碍的渠道条件(BSS)。这为无人机用户创造了非常强大的干扰条件,同时为他们提供了大量的BSS,以可能与蜂窝服务联系起来。因此,为了最大程度地提高UAV-BS无线链接的性能,UAV用户需要能够根据观察到的环境条件选择要连接到哪些BSS。本文提出了一种基于监督的学习协会计划,使用无人机可以与最合适的BS明智地联系起来。我们训练神经网络(NN),以基于从BSS的接收信号功率,已知的BSS距离以及潜在干扰物的已知位置来识别几个候选BSS的最合适的BS。然后,我们将基于NN的关联方案的性能与最稳定和最接近的邻近关联方案进行比较,并证明NN方案显着优于简单的启发式方案。

Fifth Generation (5G) cellular networks are expected to provide cellular connectivity for vehicular users, including Unmanned Aerial Vehicles (UAVs). When flying in the air, these users experience strong, unobstructed channel conditions to a large number of Base Stations (BSs) on the ground. This creates very strong interference conditions for the UAV users, while at the same time offering them a large number of BSs to potentially associate with for cellular service. Therefore, to maximise the performance of the UAV-BS wireless link, the UAV user needs to be able to choose which BSs to connect to, based on the observed environmental conditions. This paper proposes a supervised learning-based association scheme, using which a UAV can intelligently associate with the most appropriate BS. We train a Neural Network (NN) to identify the most suitable BS from several candidate BSs, based on the received signal powers from the BSs, known distances to the BSs, as well as the known locations of potential interferers. We then compare the performance of the NN-based association scheme against strongest-signal and closest-neighbour association schemes, and demonstrate that the NN scheme significantly outperforms the simple heuristic schemes.

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