论文标题
蜂窝连接的无人机的大量MIMO:挑战和有前途的解决方案
Massive MIMO for Cellular-Connected UAV: Challenges and Promising Solutions
论文作者
论文摘要
大量的多输入多输出(MIMO)是一种有前途的技术,用于实现未来与细胞连接的无人机通信(UAV)通信。地面基站(GBSS)配备了全维大阵列,可以应用自适应的细粒三维(3D)波束,以减轻高空无人机和低空陆地用户之间的强大干扰,从而显着提高网络光谱效率。但是,大规模MIMO的性能在严重取决于GBSS上无人机和地面使用者的准确渠道状态信息(CSI),这实际上很难实现,这是由于无人机诱导的试点污染以及无人机在3D中的较高的迁移率。此外,依靠大量协调的无人机或无人机群以及实用的混合GBS横梁成形体系结构的越来越流行的应用程序进一步使飞行员污染和通道/光束跟踪问题更加复杂。在本文中,我们概述了上述具有挑战性的问题,提出了新的解决方案来应对它们,并讨论了未来研究的有希望的方向。还提供了初步的仿真结果,以验证拟议解决方案的有效性。
Massive multiple-input multiple-output (MIMO) is a promising technology for enabling cellular-connected unmanned aerial vehicle (UAV) communications in the future. Equipped with full-dimensional large arrays, ground base stations (GBSs) can apply adaptive fine-grained three-dimensional (3D) beamforming to mitigate the strong interference between high-altitude UAVs and low-altitude terrestrial users, thus significantly enhancing the network spectral efficiency. However, the performance gain of massive MIMO critically depends on the accurate channel state information (CSI) of both UAVs and terrestrial users at the GBSs, which is practically difficult to achieve due to UAV-induced pilot contamination and UAV's high mobility in 3D. Moreover, the increasingly popular applications relying on a large group of coordinated UAVs or UAV swarm as well as the practical hybrid GBS beamforming architecture for massive MIMO further complicate the pilot contamination and channel/beam tracking problems. In this article, we provide an overview of the above challenging issues, propose new solutions to cope with them, and discuss about promising directions for future research. Preliminary simulation results are also provided to validate the effectiveness of proposed solutions.