毫米波大规模MIMO系统中位置信息辅助波束分配算法

Anjie Pan, Tiankui Zhang, Xiao Han
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引用次数: 7

摘要

毫米波(mmWave)频段具有大带宽可用性,可以满足第五代蜂窝网络(5G)的高数据速率需求。然而,毫米波信号遭受严重的路径损耗。波束形成技术提供了高阵列增益来克服这一限制。在进行数据连接之前,毫米波基站(BSs)需要针对用户设备(ue)搜索合适的服务波束。这个搜索过程通常在初始访问过程中完成,并导致致命的延迟。因此,合理的波束分配算法(BAA)是提高初始接入速度的关键。以位置信息为特征,以服务波束为类,构建支持向量机多分类器。当新的终端尝试接入毫米波BSs时,根据SVM多分类器的决策结果分配其服务波束。仿真结果表明,在有足够的先验位置信息时,与现有方法相比,所提出的SVM-BAA方法可以有效地降低初始接入延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location information aided beam allocation algorithm in mmWave massive MIMO systems
Millimeter wave (mmWave) band exhibits large bandwidth availability and meets the demands for high data rate of the fifth generation cellular networks (5G). However, mmWave signals suffer from severe path loss. Beamforming technology provides high array gain to overcome this limitation. Before data connection procedure, mmWave base stations (BSs) need to search for the suitable serving beams aiming at user equipments (UEs). This searching process is typically completed in the initial access procedure and causes fatal delays. Therefore, a reasonable beam allocation algorithm (BAA) is essential to speed up initial access procedure. In this paper, a support vector machine based beam allocation algorithm (SVM-BAA) is proposed, which utilizes location information and absorbs the thought of supervised learning. It constructs a SVM multi-classifier by using location information as features and serving beams as classes. When new UEs attempt to get access to mmWave BSs, their serving beams are allocated according to the decision results of SVM multi-classifier. Simulation results show that the proposed SVM-BAA can reduce the initial access delay compared with existing methods when there's enough previous location information.
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