Deep Reinforcement Learning-based Radio Resource Allocation and Beam Management under Location Uncertainty in 5G mm Wave Networks

Y. Yao, Hao Zhou, M. Erol-Kantarci
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引用次数: 4

Abstract

Millimeter Wave (mmWave) is an important part of 5G new radio (NR), in which highly directional beams are adapted to compensate for the substantial propagation loss based on UE locations. However, the location information may have some errors such as GPS errors. In any case, some uncertainty, and localization error is unavoidable in most settings. Applying these distorted locations for clustering will increase the error of beam management. Meanwhile, the traffic demand may change dynamically in the wireless environment. Therefore, a scheme that can handle both the uncertainty of localization and dynamic radio resource allocation is needed. In this paper, we propose a UK-means-based clustering and deep reinforcement learning-based resource allocation algorithm (UK-DRL) for radio resource allocation and beam management in 5G mm Wave networks. We first apply UK-means as the clustering algorithm to mitigate the localization uncertainty, then deep reinforcement learning (DRL) is adopted to dynamically allocate radio resources. Finally, we compare the UK-DRL with K-means-based clustering and DRL-based resource allocation algorithm (K-DRL), the simulations show that our proposed UK-DRL-based method achieves 150% higher throughput and 61.5% lower delay compared with K-DRL when traffic load is 4Mbps.
5G毫米波网络中基于深度强化学习的无线资源分配与波束管理
毫米波(mmWave)是5G新无线电(NR)的重要组成部分,其中采用高定向波束来补偿基于UE位置的大量传播损耗。但是,位置信息可能会有一些错误,例如GPS错误。无论如何,在大多数情况下,一些不确定性和定位错误是不可避免的。使用这些扭曲的位置进行聚类会增加波束管理的误差。同时,在无线环境下,业务需求是动态变化的。因此,需要一种既能处理定位不确定性又能处理动态无线电资源分配的方案。在本文中,我们提出了一种基于uk均值的聚类和基于深度强化学习的资源分配算法(UK-DRL),用于5G毫米波网络中的无线电资源分配和波束管理。我们首先采用UK-means作为聚类算法来减轻定位不确定性,然后采用深度强化学习(DRL)来动态分配无线电资源。最后,我们将UK-DRL与基于k -means聚类和基于drl的资源分配算法(K-DRL)进行了比较,仿真结果表明,当流量负载为4Mbps时,我们提出的基于UK-DRL的方法比K-DRL的吞吐量提高150%,延迟降低61.5%。
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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