SIEVE: Scalable user grouping for large MU-MIMO systems

Wei-Liang Shen, K. Lin, Ming-Syan Chen, Kun Tan
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引用次数: 46

Abstract

Multi-user multiple input and multiple output (MU-MIMO) is one predominate approach to improve the wireless capacity. However, since the aggregate capacity of MU-MIMO heavily depends on the channel correlations among the mobile users in a beamforming group, unwisely selecting beamforming groups may result in reduced overall capacity, instead of increasing it. How to select users into a beamforming group becomes the bottleneck of realizing the MU-MIMO gain. The fundamental challenge for user selection is the large searching space, and hence there exists a tradeoff between search complexity and achievable capacity. Previous works have proposed several low complexity heuristic algorithms, but they suffer a significant capacity loss. In this paper, we present a novel MU-MIMO MAC, called SIEVE. The core of SIEVE design is its scalable multi-user selection module that provides a knob to control the aggressiveness in searching the best beamforming group. SIEVE maintains a central database to track the channel and the coherence time for each mobile user, and largely avoids unnecessary computing with a progressive update strategy. Our evaluation, via both small-scale testbed experiments and large-scale trace-driven simulations, shows that SIEVE can achieve around 90% of the capacity compared to exhaustive search.
筛:用于大型MU-MIMO系统的可扩展用户分组
多用户多输入多输出(MU-MIMO)是提高无线容量的主要方法之一。然而,由于MU-MIMO的总容量很大程度上取决于波束形成组中移动用户之间的信道相关性,不明智地选择波束形成组可能会导致总容量的降低,而不是增加。如何选择用户加入波束形成组成为实现MU-MIMO增益的瓶颈。用户选择的基本挑战是巨大的搜索空间,因此在搜索复杂性和可实现的容量之间存在权衡。以前的研究已经提出了几种低复杂度的启发式算法,但它们都有很大的容量损失。在本文中,我们提出了一种新的MU-MIMO MAC,称为SIEVE。SIEVE设计的核心是其可扩展的多用户选择模块,该模块提供了一个旋钮来控制搜索最佳波束形成组的积极性。SIEVE维护一个中央数据库来跟踪每个移动用户的信道和相干时间,并通过渐进式更新策略在很大程度上避免了不必要的计算。通过小规模的试验台实验和大规模的跟踪驱动模拟,我们的评估表明,与穷举搜索相比,SIEVE可以实现大约90%的容量。
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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