Distributed Massive MIMO Cooperation With Low-Dimensional CSI Exchange

Zhenyao He, Wei Xu, Hong Shen, Yan Sun, X. You, Jiewei Fu
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Abstract

The trend of developing distributed multiple-input multiple-output (MIMO) cooperation has been growing for future wireless networks due to its potential of capacity improvement through network-level precoding. In massive MIMO applications, the overhead of channel state information (CSI) exchange among distributed transmitters is too large to make it possible in practical implementations. In this paper, we consider a cooperative multicell massive MIMO network with distributed regularized zero-forcing (RZF) precoding at each base station (BS), where a novel CSI exchange scheme is devised to reduce the interactive overhead. As a key finding of this work, we theoretically prove that it suffices to share the Gram matrix of local CSI among the cooperative BSs in order to achieve the same performance as a centralized cooperative MIMO network using the RZF precoding with global CSI sharing. The CSI exchange from each BS is thus reduced to a symmetric matrix that has a much smaller size than the full CSI and the amount of CSI exchange does NOT grow with the large number of antennas in massive MIMO. Specifically, based on the exchanged Gram matrices, we derive a decentralized RZF precoding design at each BS and develop both the optimal and suboptimal cooperative power allocation strategies, which achieve different performance and complexity tradeoffs. A virtual centralized power allocation is accomplished at each BS and the performance achieved by the proposed decentralized precoding is the same as the centralized benchmark scheme with full CSI exchange. These superiorities of the proposed schemes are verified through simulation results.
分布式大规模MIMO合作与低维CSI交换
分布式多输入多输出(MIMO)合作由于其通过网络级预编码提高容量的潜力,在未来的无线网络中发展的趋势日益增长。在大规模MIMO应用中,分布式发射机之间信道状态信息交换的开销太大,无法在实际实现中实现。在本文中,我们考虑了在每个基站(BS)上使用分布式正则化零强制(RZF)预编码的协作多小区大规模MIMO网络,并设计了一种新的CSI交换方案来减少交互开销。作为本工作的一个关键发现,我们从理论上证明了在协作BSs之间共享局部CSI的Gram矩阵就足以实现与使用具有全局CSI共享的RZF预编码的集中式协作MIMO网络相同的性能。因此,来自每个BS的CSI交换减少到一个对称矩阵,其尺寸比完整的CSI小得多,并且在大规模MIMO中,CSI交换的数量不会随着天线数量的增加而增加。具体而言,基于交换的Gram矩阵,我们在每个BS上推导了分散的RZF预编码设计,并开发了最优和次最优的协作功率分配策略,以实现不同的性能和复杂性权衡。在每个BS上完成虚拟的集中功率分配,所提出的分散预编码方案的性能与具有全CSI交换的集中式基准方案相同。仿真结果验证了所提方案的优越性。
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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