基于强化学习的异构无线网络多路径调度

Thanh Trung Nguyen, Minh Hai Vu, Phi-Le Nguyen, Phan-Thuan Do, Kien Nguyen
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引用次数: 0

摘要

随着5G等新一代移动网络的发展和商业化,未来通信将从传统的单路径范式转向MPTCP和MPQUIC等多路径传输协议。在处理多路径传输时,最关键的问题之一是适当地调度路径以保证服务质量。尽管在开发多路径调度算法方面已经付出了巨大的努力,但现有的方法在处理网络的动态性时受到一些限制,包括拥塞和数据包丢失。本文提出了一种新的基于强化学习的多径传输协议SATO,该协议可以有效地调度异构无线网络中的多径通信。通过利用强化学习的自学习能力,配备SATO的节点可以捕捉环境变化,并根据适当的策略选择传输路径,从而优化QoS。我们的评估结果表明,与最先进的算法相比,SATO在模拟中将QoS提高了10%-15%,在实际部署中提高了12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reinforcement Learning-based Multipath Scheduling for Heterogeneous Wireless Networks
With the development and commercialization of new mobile network generations such as 5G and beyond, future communications are shifting from the traditional single-path paradigm to multipath transport protocols such as MPTCP and MPQUIC. One of the most critical issues in dealing with the multipath transmission is appropriately scheduling the pathways in order to guarantee QoS. Despite the fact that tremendous effort has been put into developing multipath scheduling algorithms, existing approaches suffer from several limitations when dealing with the network's dynamicity, including congestion and packet loss. In this paper, we propose a novel Reinforcement learning-based multipath transport protocol named SATO, which efficiently schedules multipath communication in heterogeneous wireless networks. By leveraging the self-learning ability of reinforcement learning, a node equipped with SATO can capture the environmental changes and select transmission paths based on an appropriate policy to optimize QoS. Our evaluation results show that SATO improves the QoS by 10%-15% in simulation and 12% in a real deployment compared to the state-of-the-art algorithm.
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