Antenna selection in massive MIMO using non-central Principal Component Analysis

M. Rana, R. Vesilo, I. Collings
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引用次数: 4

Abstract

Massive MIMO has the potential to offer high throughput in today's fast wireless communication systems, however, the large number of antennas and RF chains needed at the transmitter brings the challenge of high system complexity and hardware energy consumption. In this paper, two semi-heuristic techniques are proposed for practical antenna selection in a multi-user MIMO broadcast system using principal components analysis (PCA) to reduce signal correlations at users and remove antennas that contribute least to system sum capacity, thereby reducing the number of RF chains needed. Zero forcing precoding is used and users are equipped with a single antenna. Using analytic methods PCA eigenvalues are decomposed into two components: the mean channel gain component and the channel correlation component. Using simulation we show that the proposed antenna selection methods perform much better using mean channel gain selection and show how antenna selection depends on the channel matrix structure.
基于非中心主成分分析的大规模MIMO天线选择
大规模MIMO在当今的快速无线通信系统中具有提供高吞吐量的潜力,然而,发射器所需的大量天线和射频链带来了高系统复杂性和硬件能耗的挑战。本文提出了两种半启发式技术,用于多用户MIMO广播系统中的实际天线选择,使用主成分分析(PCA)来降低用户的信号相关性并去除对系统总容量贡献最小的天线,从而减少所需的射频链数量。使用零强制预编码,用户配备单天线。采用分析方法将主成分分析特征值分解为两个分量:信道平均增益分量和信道相关分量。通过仿真,我们证明了采用平均信道增益选择的天线选择方法的性能要好得多,并展示了天线选择如何依赖于信道矩阵结构。
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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