Guaranteeing User Rates With Reinforcement Learning in 5G Radio Access Networks

I. Comsa, Sijing Zhang, Mehmet Emin Aydin, P. Kuonen, R. Trestian, G. Ghinea
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引用次数: 4

Abstract

The user experience constitutes an important quality metric when delivering high-definition video services in wireless networks. Failing to provide these services within requested data rates, the user perceived quality is strongly degraded. On the radio interface, the packet scheduler is the key entity designed to satisfy the users' data rates requirements. In this chapter, a novel scheduler is proposed to guarantee the bit rate requirements for different types of services. However, the existing scheduling schemes satisfy the user rate requirements only at some extent because of their inflexibility to adapt for a variety of traffic and network conditions. In this sense, the authors propose an innovative framework able to select each time the most appropriate scheduling scheme. This framework makes use of reinforcement learning and neural network approximations to learn over time the scheduler type to be applied on each momentary state. The simulation results show the effectiveness of the proposed techniques for a variety of data rates' requirements and network conditions.
5G无线接入网络中强化学习保证用户速率
当在无线网络中提供高清视频服务时,用户体验是一个重要的质量指标。如果不能在请求的数据速率内提供这些服务,用户感知到的质量就会严重下降。在无线接口中,数据包调度程序是满足用户数据速率要求的关键实体。在本章中,提出了一种新的调度器来保证不同类型的服务对比特率的要求。然而,现有的调度方案由于不能灵活地适应各种流量和网络条件,只能在一定程度上满足用户对速率的要求。在这个意义上,作者提出了一个创新的框架,能够每次选择最合适的调度方案。该框架利用强化学习和神经网络近似来学习应用于每个瞬间状态的调度程序类型。仿真结果表明了所提技术在各种数据速率要求和网络条件下的有效性。
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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