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Reinforcement Learning Based Anti-Jamming Cognitive Radio Channel Selection

机译:基于加强学习的抗干扰认知无线电频道选择

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Dynamic spectrum management (DSM) models and cognitive radio (CR) technology are presented as promising solutions to the spectrum scarcity and under-utilization problems. However, the CR efficient exploitation of the spectrum can be limited by the jamming attack. In this paper, we use the spectrum sensing and the learning abilities of the CR to solve this problem. The proposed algorithm enables the CR to pro-actively avoid the jammed channels. We present a suitable model to the channel selection problem and we enhance the proposed solution through cooperation between two cognitive radio nodes. Simulation results prove the performance of the proposed solution compared to other solutions and against different jamming strategies.
机译:动态频谱管理(DSM)模型和认知无线电(CR)技术被呈现为对频谱稀缺性和利用率不足问题的有希望的解决方案。但是,CR的CR高效利用频谱可以受到干扰攻击的限制。在本文中,我们使用CR的频谱感测和学习能力来解决这个问题。所提出的算法使CR能够积极地避免卡住通道。我们向频道选择问题提出了一个合适的模型,我们通过两个认知无线电节点之间的合作来增强所提出的解决方案。仿真结果证明了与其他解决方案相比和不同干扰策略的提出解决方案的性能。

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