Adaptive Hybrid Beamforming with Massive Phased Arrays in Macro-Cellular Networks

Shahram Shahsavari, S. A. Hosseini, Chris T. K. Ng, E. Erkip
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引用次数: 8

Abstract

Hybrid beamforming via large antenna arrays has a great potential for increasing data rate in cellular networks by delivering multiple data streams simultaneously. In this paper, several beamforming design algorithms are proposed based on long-term channel information in macro-cellular environments where the base station is equipped with a massive phased array under per-antenna power constraint. Using an adaptive scheme, beamforming vectors are updated whenever the long-term channel information changes. First, the problem is studied when the base station has a single RF chain (single-beam scenario). Semi-definite relaxation (SDR) with randomization is used to solve the problem. As a second approach, a low-complexity heuristic beam composition algorithm is proposed which performs very close to the upper-bound obtained by SDR. Next, the problem is studied for a generic number of RF chains (multi-beam scenario) where the Gradient Projection method is used to obtain local solutions. Numerical results reveal that using massive antenna arrays with optimized beamforming vectors can lead to five-fold network throughput improvement over systems with conventional antennas.
大蜂窝网络中大规模相控阵自适应混合波束形成
在蜂窝网络中,通过大型天线阵列的混合波束形成可以同时传输多个数据流,从而提高数据速率。本文提出了几种基于长期信道信息的宏蜂窝环境下,在单天线功率约束下,基站配备大规模相控阵的波束形成设计算法。采用自适应方案,波束形成矢量在长期信道信息发生变化时进行更新。首先,研究了基站单射频链(单波束场景)下的问题。采用带随机化的半确定松弛(SDR)来解决这一问题。第二种方法是提出一种低复杂度的启发式波束合成算法,该算法的性能非常接近SDR算法的上界。接下来,研究了一般数目的射频链(多波束场景)的问题,其中使用梯度投影法获得局部解。数值结果表明,采用优化波束形成矢量的大规模天线阵列可以使网络吞吐量比使用传统天线的系统提高5倍。
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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