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A multi-agent Q-learning based rendezvous strategy for cognitive radios

机译:基于多智能体Q学习的认知无线电交会策略

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In this paper, we address the blind rendezvous problem of cognitive radios (CRs) quickly finding each other to establish communication in a multi-channel dynamic spectrum access (DSA) environment. We propose a multi-agent Q-learning based rendezvous strategy that allows CR-based secondary users (SUs) to actively explore a dynamic DSA environment and learn through resulting rewards which channels are best to use for rendezvous. Through simulation, we show that our strategy enhances the rendezvous performance of SUs by enabling them to use the learned channels in an effective and efficient manner.
机译:在本文中,我们解决了认知无线电(CR)的盲集合点问题,该问题在多信道动态频谱访问(DSA)环境中快速找到彼此以建立通信。我们提出了一种基于多代理Q学习的集合策略,该策略允许基于CR的二级用户(SU)积极探索动态DSA环境,并通过所获得的奖励来学习最适合用于集合的渠道。通过仿真,我们表明,我们的策略通过使SU以有效和高效的方式使用学习的渠道来增强SU的集合性能。

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