感知还是传输:一种基于学习的认知无线网络频谱管理方案

M. Di Felice, K. Chowdhury, W. Meleis, L. Bononi
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引用次数: 18

摘要

无线网状网络由网状路由器(MR)和多个相关联的网状客户端(mc)的互连集群组成,可以使用配备了认知无线电的收发器,允许它们为高带宽通信选择许可频率。然而,对这些频段的授权用户的保护是一个关键的限制。在本文中,我们提出了一种基于强化学习的方法,该方法允许每个网格集群独立决定操作通道、频谱感知持续时间、切换时间和数据传输持续时间。本文的贡献有三个方面。首先,基于映射到链路传输延迟的信道的累积奖励,以及估计的许可用户活动,MRs为每个信道分配权重,从而为mc操作选择性能最高的信道。其次,我们的算法允许动态选择感知时间间隔,以优化链路吞吐量。第三,通过合作共享,我们允许MRs共享它们的通道表信息,从而允许更准确的学习模型。模拟结果表明,在没有学习的情况下,具有预设传感和传输持续时间的经典方案有显着改进。
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To Sense or to Transmit: A Learning-Based Spectrum Management Scheme for Cognitive Radiomesh Networks
Wireless mesh networks, composed of interconnected clusters of mesh router (MR) and multiple associated mesh clients (MCs), may use cognitive radio equipped transceivers, allowing them to choose licensed frequencies for high bandwidth communication. However, the protection of the licensed users in these bands is a key constraint. In this paper, we propose a reinforcement learning based approach that allows each mesh cluster to independently decide the operative channel, the durations for spectrum sensing, the time of switching, and the duration for which the data transmission happens. The contributions made in this paper are threefold. First, based on accumulated rewards for a channel mapped to the link transmission delays, and the estimated licensed user activity, the MRs assign a weight to each of the channels, thereby selecting the channel with highest performance for MCs operations. Second, our algorithm allows dynamic selection of the sensing time interval that optimizes the link throughput. Third, by cooperative sharing, we allow the MRs to share their channel table information, thus allowing a more accurate learning model. Simulations results reveal significant improvement over classical schemes which have pre-set sensing and transmission durations in the absence of learning.
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