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User Grouping for Massive MIMO in FDD Systems: New Design Methods and Analysis

机译:FDD系统中大规模MIMO的用户分组:新的设计方法和分析

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The massive multiple-input multiple-output (MIMO) system has drawn increasing attention recently as it is expected to boost the system throughput and result in lower costs. Previous studies mainly focus on time division duplexing (TDD) systems, which are more amenable to practical implementations due to channel reciprocity. However, there are many frequency division duplexing (FDD) systems deployed worldwide. Consequently, it is of great importance to investigate the design and performance of FDD massive MIMO systems. To reduce the overhead of channel estimation in FDD systems, a two-stage precoding scheme was recently proposed to decompose the precoding procedure into intergroup precoding and intragroup precoding. The problem of user grouping and scheduling thus arises. In this paper, we first propose three novel similarity measures for user grouping based on weighted likelihood, subspace projection, and Fubini-Study, respectively, as well as two novel clustering methods, including hierarchical and K-medoids clustering. We then propose a dynamic user scheduling scheme to further enhance the system throughput once the user groups are formed. The load balancing problem is considered when few users are active and solved with an effective algorithm. The efficacy of the proposed schemes are validated with theoretical analysis and simulations.
机译:大规模的多输入多输出(MIMO)系统最近引起了越来越多的关注,因为它有望提高系统的吞吐量并降低成本。先前的研究主要集中在时分双工(TDD)系统上,由于信道互易性,它们更适合实际实现。但是,全世界部署了许多频分双工(FDD)系统。因此,研究FDD大规模MIMO系统的设计和性能非常重要。为了减少FDD系统中信道估计的开销,最近提出了一种两阶段预编码方案,以将预编码过程分解为组间预编码和组内预编码。因此出现了用户分组和调度的问题。在本文中,我们首先根据加权似然,子空间投影和Fubini-Study分别提出三种新颖的用户分组相似性度量,以及两种新的聚类方法,包括分层聚类和K-medoids聚类。然后,我们提出了一种动态用户调度方案,以在用户组形成后进一步提高系统吞吐量。当很少的用户处于活动状态并使用有效的算法求解时,会考虑负载平衡问题。理论分析和仿真验证了所提方案的有效性。

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