Reinforcement Learning for Improved UAV-Based Integrated Access and Backhaul Operation

Nikita Tafintsev, D. Moltchanov, M. Simsek, Shu-ping Yeh, S. Andreev, Y. Koucheryavy, M. Valkama
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引用次数: 7

Abstract

There is a strong interest in utilizing commercial cellular networks to support unmanned aerial vehicles (UAVs) to send control commands and communicate heavy traffic. Cellular networks are well suited for offering reliable and secure connections to the UAVs as well as facilitating traffic management systems to enhance safe operation. However, for the full-scale integration of UAVs that perform critical and high-risk tasks, more advanced solutions are required to improve wireless connectivity in mobile networks. In this context, integrated access and backhaul (IAB) is an attractive approach for the UAVs to enhance connectivity and traffic forwarding. In this paper, we study a novel approach to dynamic associations based on reinforcement learning at the edge of the network and compare it to alternative association algorithms. Considering the average data rate, our results indicate that the reinforcement learning methods improve the achievable data rate. The optimal parameters of the introduced algorithm are highly sensitive to the donor next generation node base (DgNB) and UAV IAB node densities, and need to be identified beforehand or estimated via a stateful search. However, its performance nearly converges to that of the ideal scheme with a full knowledge of the data rates in dense deployments of DgNBs.
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改进的基于无人机的综合接入和回程操作的强化学习
人们对利用商用蜂窝网络来支持无人机(uav)发送控制命令和通信繁忙交通有着浓厚的兴趣。蜂窝网络非常适合为无人机提供可靠和安全的连接,并促进交通管理系统,以加强安全操作。然而,对于执行关键和高风险任务的无人机的全面集成,需要更先进的解决方案来改善移动网络中的无线连接。在这种情况下,综合接入和回程(IAB)是无人机增强连通性和流量转发的一种有吸引力的方法。在本文中,我们研究了一种基于网络边缘强化学习的动态关联新方法,并将其与其他关联算法进行了比较。考虑到平均数据率,我们的结果表明,强化学习方法提高了可实现的数据率。该算法的最优参数对供体下一代节点库(DgNB)和无人机IAB节点密度高度敏感,需要事先识别或通过状态搜索进行估计。然而,在充分了解dgnb密集部署中的数据速率的情况下,其性能几乎收敛于理想方案。
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