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

2017 Cognitive Communications for Aerospace Applications Workshop (CCAA)(2017)

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摘要
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.
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关键词
multiagent Q-learning based rendezvous strategy,cognitive radios,blind rendezvous problem,multichannel dynamic spectrum access environment,CR-based secondary users,dynamic DSA environment
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