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Reduced-Order Zero-Forcing Beamforming vs Optimal Beamforming and Dirty Paper Coding and Massive MIMO Analysis

机译:减少零强制波束成形与最优波束形成和脏纸编码和大规模的MIMO分析

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Optimal linear transmitter beamformers in multi-antenna multi-user systems are of the Minimum Mean Squared Error (MMSE) type (dual uplink MMSE receivers). MMSE designs make an optimal compromise between noise enhancement and interference suppression and reduce to matched filters at low SNR and zero-forcing at high SNR. We consider a realistic scenario of user channels of varying attenuation and constrain the beamformers to either zero-force or ignore each interference term. This leads to a reduced-order zero-forcing (RO-ZF) design in which the number of interference sources being zero-forced increases with SNR. We apply a simple large systems analysis (applicable to Massive MIMO) to determine the asymptotic performance of RO-ZF designs, determine the optimal ZF orders, and compare to optimal and ZF linear and Dirty Paper Coding (DPC) designs. RO-ZF designs lead to variable reductions of computational complexity and channel state information (CSI) requirements (esp. in future multi-cell extensions), both important considerations in Massive MIMO systems.
机译:多天线多用户系统中的最佳线性发射器波束形成器具有最小均方误差(MMSE)类型(双上行链路MMSE接收器)。 MMSE设计在噪声增强和干扰抑制之间进行最佳折衷,并在低SNR处减少到匹配的过滤器,高SNR零强制。我们考虑不同衰减的用户频道的现实场景,并将波束形成器限制为零力或忽略每个干扰项。这导致零级零强制(RO-ZF)设计,其中干扰源的数量用SNR零强制增加。我们应用简单的大型系统分析(适用于大规模MIMO)以确定RO-ZF设计的渐近性能,确定最佳ZF订单,并与最佳和ZF线性和脏纸编码(DPC)设计进行比较。 RO-ZF设计导致计算复杂性和频道状态信息(CSI)要求的可变减少(ESP。在未来的多电池扩展中),这两个都是大规模MIMO系统的重要考虑因素。

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