NetBeam: Networked and Distributed 3-D Beamforming for Multi-user Heterogeneous Traffic

Carlos Bocanegra, Kubra Alemdar, S. García, Chetna Singhal, K. Chowdhury
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引用次数: 6

Abstract

The paper presents theoretical development and a system implementation of NetBeam, a framework for fully programmable, reconfigurable and distributed beamforming. NetBeam allows for joint mechanical antenna steering, grouping of a network of individual transmitter radios for specific target receivers, as well as digital beamforming that satisfies higher layer application demands. We make the following theoretical contributions: (i) We utilize, for the first time, a machine learning approach that uses Kriging for predicting antenna gains for arbitrary 3-D placements of transmitter - receiver pairs. NetBeam efficiently exploits fine-grained and accurate antenna gain predictions of the model, while estimating the uncertainty at unexplored locations through a Gaussian distribution. (ii) We allocate antennas to receivers by formulating the scenario as a bipartite graph, followed by perfect matching strategies that maximize the channel gain. (iii) We leverage the CSI computed in stage (i) to compute the optimum digital beamforming weights by trading off SINR and power consumption that meets application requirements using semidefinite optimization. Our implementation addresses many practical aspects of distributed beamforming including achieving fast frequency, time, and phase synchronization. NetBeam minimizes the gap to optimal channel gain in a 3-D space, and reduces the total transmit power up to 60%, while still managing to provide the required SINR.
网络波束:多用户异构流量的网络化和分布式三维波束形成
本文介绍了NetBeam的理论发展和系统实现,NetBeam是一个完全可编程、可重构和分布式波束形成的框架。NetBeam允许联合机械天线转向,对特定目标接收器的单个发射机无线电网络进行分组,以及满足更高层次应用需求的数字波束成形。我们做出了以下理论贡献:(i)我们首次利用一种机器学习方法,该方法使用克里格来预测发射器-接收器对任意3d位置的天线增益。NetBeam有效地利用模型的细粒度和精确的天线增益预测,同时通过高斯分布估计未探测位置的不确定性。(ii)我们通过将场景描述为二部图来分配天线给接收器,然后采用最大化信道增益的完美匹配策略。(iii)我们利用在阶段(i)中计算的CSI来计算最佳数字波束形成权重,通过使用半确定优化来权衡SINR和满足应用要求的功耗。我们的实现解决了分布式波束形成的许多实际问题,包括实现快速的频率、时间和相位同步。NetBeam最大限度地减少了3-D空间中与最佳信道增益的差距,并将总发射功率降低了60%,同时仍能提供所需的信噪比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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