大规模MIMO系统中资源分配和SDMA分组的低复杂度解决方案

Weskley V. F. Maurício, D. C. Araújo, F. H. C. Neto, F. Lima, T. Maciel
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引用次数: 10

摘要

研究了多用户海量多输入多输出(MIMO)中的空分多址分组问题。所采用的方法是,首先使用机器学习领域知名的分类算法K-means算法,根据用户空间协方差矩阵的知识,将移动站(MSs)划分为空间兼容的簇。其次,它从每个集群调度一个子集的MSs,从而支持每个集群的多个空间流。此外,MSs是根据一个度量来选择的,该度量考虑了它们的空间信道相关性和信道增益之间的权衡。采用分支定界(BB)算法和最佳拟合(BF)算法对相应的调度问题进行了优化求解。此外,我们将所提出的解决方案与随机调度程序进行比较,随机调度程序执行聚类并随机选择MSs组成组。仿真结果表明,提出的BB和BF方案优于随机调度方案。BB和BF解决方案实现了相似的容量性能,但前者具有多项式时间计算复杂度,而后者具有指数计算复杂度。
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A Low Complexity Solution for Resource Allocation and SDMA Grouping in Massive MIMO Systems
This work investigates the space-division multiple access grouping problem in multiuser massive multiple input multiple output (MIMO). The adopted approach consists in performing firstly the K-means algorithm, that is a classification algorithm well known in machine learning field, to split mobile stations (MSs) into spatially compatible clusters based on the knowledge of the users' spatial covariance matrices. Secondly, it schedules a sub-set of MSs from each cluster thus supporting multiple spatial streams per cluster. Furthermore, the MSs are selected based on a metric that accounts for the trade-off between their spatial channel correlation and channel gain. The corresponding scheduling is optimally solved by using branch and bound (BB) and best fit (BF) algorithms. Moreover, we compare the proposed solutions with the random scheduler that performs clustering and chooses the MSs to compose the groups at random. The simulation results show that the two proposed solutions, BB and BF outperform, the random scheduler. The BB and BF solutions achieve similar capacity performance, but the first has polynomial-time computational complexity while the second a exponential computational complexity.
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