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Decentralized and Dynamic Band Selection in Uplink Enhanced Licensed-Assisted Access: Deep Reinforcement Learning Approach

机译:上行链路增强型许可辅助访问中分散和动态频段选择:深度加固学习方法

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Enhanced licensed-assisted access (eLAA) is an operational mode that allows the use of unlicensed band to support long-term evolution (LTE) service via carrier aggregation technology. The extension of additional bandwidth is beneficial to meet the demands of the growing mobile traffic. In the uplink eLAA, which is prone to unexpected interference from WiFi access points, resource scheduling by the base station, and then performing a listen before talk (LBT) mechanism by the users can seriously affect the resource utilization. In this paper, we present a decentralized deep reinforcement learning (DRL)-based approach in which each user independently learns dynamic band selection strategy that maximizes its own rate. Through extensive simulations, we show that the proposed DRL-based band selection scheme improves resource utilization while supporting certain minimum quality of service (QoS).
机译:增强的许可辅助访问(ELAA)是一种操作模式,允许使用未经许可的频带来支持通过载波聚合技术来支持长期演进(LTE)服务。额外带宽的延伸有利于满足日益增长的移动流量的需求。在上行链路ELAA中,其容易出现来自WiFi接入点的意外干扰,由基站的资源调度,然后在用户之前执行侦听(LBT)机制可以严重影响资源利用率。在本文中,我们提出了一种分散的深度加强学习(DRL)基于方法,其中每个用户独立地学习动态频带选择策略,最大化其自身的速率。通过广泛的模拟,我们表明,所提出的基于DRL的频带选择方案在支持某些最低服务质量(QoS)的同时提高了资源利用率。

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