Neighbor-Assisted Localization for Massive MIMO 5G Systems

Amal Sellami, Leila Nasraoui, L. N. Atallah
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引用次数: 3

Abstract

In this paper, we propose a multi-stage localization technique that enables to determine the position of a Target User Equipment (T-UE) with harsh channel conditions through the assistance of neighboring User Equipments (UEs). The proposed approach allows a reduced-complexity localization by minimizing the search space through multistage treatment. A neighbor discovery processing is first performed to identify the two nearest neighboring UEs among a set of UEs in the vicinity. The so selected neighbors are used as anchors (A-UE). Then, based on the signal strength, the distances separating the two A-UEs to the T-UE are determined. The distance estimates are used to plot two potential solutions of the Angle of Arrival (AoA) of T-UE. To distinguish the correct AoA estimate, oriented beamforming is performed around short arcs centered on the two AoA candidates. The user's position is then deduced based on the estimates of the AoA and the distance to the A-UEs. Our approach exploits the capabilities of neighbor discovery and oriented beamforming to provide an accurate position estimate for UEs experiencing harsh channel conditions that render direct localization at the base station difficult.
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大规模MIMO 5G系统的邻居辅助定位
在本文中,我们提出了一种多阶段定位技术,该技术能够通过相邻用户设备(ue)的辅助来确定具有恶劣信道条件的目标用户设备(T-UE)的位置。该方法通过多级处理最小化搜索空间,从而降低了定位的复杂性。首先执行邻居发现处理,以在附近的一组终端中识别最近的两个相邻终端。选择的邻居被用作锚点(A-UE)。然后,根据信号强度,确定两个a - ue到T-UE之间的距离。利用距离估计绘制了T-UE到达角(AoA)的两个可能解。为了区分正确的AoA估计,在以两个候选AoA为中心的短弧周围进行定向波束形成。然后根据AoA的估计和到ua的距离推断出用户的位置。我们的方法利用邻居发现和定向波束形成的能力,为遇到恶劣信道条件的终端提供准确的位置估计,这些条件使得基站的直接定位变得困难。
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