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Massive MIMO Channel Subspace Estimation From Low-Dimensional Projections

机译:低维投影的大规模MIMO信道子空间估计

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摘要

Massive MIMO is a variant of multiuser MIMO (Multi-Input Multi-Output) system, where the number of base-station antennas M is very large and generally much larger than the number of spatially multiplexed data streams. Unfortunately, the front-end A/D conversion necessary to drive hundreds of antennas, with a signal bandwidth of 10 to 100 MHz, requires very large sampling bit-rate and power consumption. To reduce complexity, Hybrid Digital-Analog architectures have been proposed. Our work in this paper is motivated by one of such schemes named Joint Spatial Division and Multiplexing (JSDM), where the downlink precoder (resp., uplink linear receiver) is split into product of a baseband linear projection (digital) and an RF reconfigurable beamforming network (analog), such that only m≪M A/D converters and RF chains is needed. In JSDM, users are grouped according to similarity of their signal subspaces, and these groups are separated by the analog beamforming stage. Further multiplexing gain in each group is achieved using the digital precoder. Therefore, it is apparent that extracting the signal subspace of the M -dim channel vectors from snapshots of m -dim projections, with m≪M , plays a fundamental role in JSDM implementation. In this paper, we develop efficient subspace estimation algorithms that require sampling only m=O(2M−−√) antennas and, for a given p≪M , return a p-dim beamformer (subspace) that has a performance comparable with the best p -dim beamformer designed from the full knowledge of the exact channel covariance matrix. We assess the performance of our proposed estimators both analytically and empirically via numerical simulations.
机译:大规模MIMO是多用户MIMO(多输入多输出)系统的一种变体,其中基站天线M的数量非常大,通常比空间复用数据流的数量大得多。不幸的是,驱动数百根天线(信号带宽为10至100 MHz)所需的前端A / D转换需要非常大的采样比特率和功耗。为了降低复杂度,已经提出了混合数模架构。我们在本文中的工作是受一种称为联合空间分割与复用(JSDM)的方案的激励,其中将下行链路预编码器(分别是上行链路线性接收器)拆分为基带线性投影(数字)和可重构RF的乘积波束形成网络(模拟),因此仅需要m≪MA / D转换器和RF链。在JSDM中,用户根据其信号子空间的相似性进行分组,并且这些组由模拟波束形成阶段分隔开。使用数字预编码器可实现每组中的进一步多路复用增益。因此,很明显,从m -dim投影的快照中提取m -dim通道矢量的信号子空间m m,在JSDM实现中起着基本作用。在本文中,我们开发了高效的子空间估计算法,该算法仅需要采样m = O(2M−-√)天线,并且对于给定的p≪M,返回性能与最佳天线相当的p昏暗波束形成器(子空间) p-dim波束成形器是根据对精确信道协方差矩阵的全面了解而设计的。我们通过数值模拟的分析和经验评估我们提出的估计量的性能。

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