5G及以上蜂窝网络中的毫米波HetNet强化学习方法提高QoS和利用路径损失模型

Khawar Bashir, Asad Ali, Amir Ali, Muhammad Waseem Razzaq
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引用次数: 0

摘要

本文介绍了高密度异构网络(HetNet),这是第五代(5G)蜂窝网络中最有前途的技术。由于5G将在很长一段时间内可用,上一代网络系统将需要定制和更新。我们研究了遗留和基于Q-Learning (QL)的自适应资源分配系统的优点和缺点。此外,对各种方法和方案进行了各种比较,以评估未来生成的解决方案。微波宏蜂窝用于实现超大容量,如长期演进(LTE)、eNodeB (eNB)和多媒体通信无线技术(MC),它们最有可能被部署在这些领域。本文还介绍了5G毫米波实现的四种场景,包括提出的系统架构。WL算法为小蜂窝基站(SBS)分配最优功率,以满足宏蜂窝用户设备(mue)和小蜂窝用户设备(scue)所需的最小容量,从而提供服务质量(QoS)。本研究讨论了密集HetNet及其产生的大量回程流量所面临的挑战。最后,基于集群的核心HetNet设计旨在减少回程流量。根据我们的研究结果,毫米波HetNet和MEC可以在广泛的应用中发挥作用,包括5G及以后的超高数据速率和低延迟通信。我们还使用通道模型模拟器检查了LOS和NLOS (NYUSIM)在38 GHz和73 GHz毫米波频段使用均匀线性阵列(ULA) 2X2和64x16天线配置的定向功率延迟分布,包括接收信号功率、路径损耗和路径损耗指数(PLE)。仿真结果显示了几种路径损耗模型在毫米波和sub- 6ghz频段的性能。由于考虑了发射端和接收端之间的所有阴影和反射效应,在毫米波波段的近距离(CI)模型的路径损耗高于开放空间和两种射线路径损耗模型。我们还将该方法与Amiri、Su、Alsobhi、Iqbal和greedy(非自适应)等现有模型进行了比较,发现该方法不仅提高了MUE和SUE最小容量,降低了BT复杂度,而且建立了新的最小QoS阈值。我们也谈到了未来的6G研究。与在混合异构网络中单独使用双斜率路径损失模型相比,我们的仿真结果表明,当使用双斜率路径损失模型时,解耦更加明显,这在覆盖和数据速率方面提高了系统性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MM-Wave HetNet in 5G and beyond Cellular Networks Reinforcement Learning Method to improve QoS and Exploiting Path Loss Model
This paper presents High density heterogeneous networks (HetNet) which are the most promising technology for the fifth generation (5G) cellular network. Since 5G will be available for a long time, previous generation networking systems will need customization and updates. We examine the merits and drawbacks of legacy and Q-Learning (QL)-based adaptive resource allocation systems. Furthermore, various comparisons between methods and schemes are made for the purpose of evaluating the solutions for future generation. Microwave macro cells are used to enable extra high capacity such as Long-Term Evolution (LTE), eNodeB (eNB), and Multimedia Communications Wireless technology (MC), in which they are most likely to be deployed. This paper also presents four scenarios for 5G mm-Wave implementation, including proposed system architectures. The WL algorithm allocates optimal power to the small cell base station (SBS) to satisfy the minimum necessary capacity of macro cell user equipment (MUEs) and small cell user equipment (SCUEs) in order to provide quality of service (QoS) (SUEs). The challenges with dense HetNet and the massive backhaul traffic they generate are discussed in this study. Finally, a core HetNet design based on clusters is aimed at reducing backhaul traffic. According to our findings, MM-wave HetNet and MEC can be useful in a wide range of applications, including ultra-high data rate and low latency communications in 5G and beyond. We also used the channel model simulator to examine the directional power delay profile with received signal power, path loss, and path loss exponent (PLE) for both LOS and NLOS using uniform linear array (ULA) 2X2 and 64x16 antenna configurations at 38 GHz and 73 GHz mmWave bands for both LOS and NLOS (NYUSIM). The simulation results show the performance of several path loss models in the mmWave and sub-6 GHz bands. The path loss in the close-in (CI) model at mmWave bands is higher than that of open space and two ray path loss models because it considers all shadowing and reflection effects between transmitter and receiver. We also compared the suggested method to existing models like Amiri, Su, Alsobhi, Iqbal, and greedy (non adaptive), and found that it not only enhanced MUE and SUE minimum capacities and reduced BT complexity, but it also established a new minimum QoS threshold. We also talked about 6G researches in the future. When compared to utilizing the dual slope route loss model alone in a hybrid heterogeneous network, our simulation findings show that decoupling is more visible when employing the dual slope path loss model, which enhances system performance in terms of coverage and data rate.
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