Location-Free Beam Prediction in mmWave Systems

Tushara Ponnada, H. Al-Tous, O. Tirkkonen
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引用次数: 4

Abstract

Channel charting is a method for creating radio-maps of a cell that capture the neighborhood relationships between User Equipments (UEs) in the cell based on machine learning techniques. In this paper, we leverage channel charting for predicting the best Base Station (BS) beam to serve a given UE in a massive-MIMO 5G network. Because of the autonomous beamforming at the UE in 5G networks, the BS cannot determine the best beam for transmission to a UE by measuring the UE transmissions in all the BS beams. To address this issue, we propose a framework to predict the best BS beam for a mobile UE in the next transmission instant by utilizing the channel charts of the cell that the UE is currently in. We evaluate the prediction accuracy of the framework using simulated channels from QuaDRiGa channel generator. We compare the performance of channel chart and physical location based predictors. While the prediction accuracy attained using channel charting is less than that of the prediction using physical locations, there remain several ways to improve the performance.
毫米波系统中的无位置波束预测
通道图是一种基于机器学习技术创建单元无线电图的方法,该方法捕获单元中用户设备(ue)之间的邻域关系。在本文中,我们利用信道图来预测在大规模mimo 5G网络中为给定UE服务的最佳基站(BS)波束。由于5G网络中终端的自主波束形成,基站无法通过测量所有基站波束中的终端传输来确定向终端传输的最佳波束。为了解决这个问题,我们提出了一个框架,利用移动终端当前所在小区的信道图来预测下一个传输瞬间移动终端的最佳BS波束。我们使用QuaDRiGa信道发生器的模拟信道来评估该框架的预测精度。我们比较了通道图和基于物理位置的预测器的性能。虽然使用信道图获得的预测精度低于使用物理位置的预测精度,但仍然有几种方法可以提高性能。
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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