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首页> 外文期刊>Wireless personal communications: An Internaional Journal >A Reinforcement Learning Based Routing in Cognitive Radio Networks for Primary Users with Multi-stage Periodicity
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A Reinforcement Learning Based Routing in Cognitive Radio Networks for Primary Users with Multi-stage Periodicity

机译:基于多阶段周期的主用户的认知无线电网络路由的加强学习

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Designing an efficient routing protocol for cognitive radio networks is critical due to the dynamic behavior of the primary users. Based on empirical studies, the primary users activity on the licensed channels has periodicity comprised of several stages, and that the model of primary users activity may change during different stages. This paper has identified two main challenges facing designers: how to transmit packets via a stable route, and how to ensure imposing of minimal interference on the primary users. To address these, we propose a routing protocol which is based on a generalized version of Q-learning and which exploits the said model of primary users behavior. We divide the infinite time horizon into cycles (corresponding to periods), then break each cycle into several sub-cycles (corresponding to stages), making an assumption that the statistical model parameters of the primary users activity will not change during a sub-cycle. The extensive simulations confirm that our proposed routing approach outperforms existing schemes in terms of throughput and minimal interference. The paper also verifies that imposing of significant interference on the primary users and degradation of QoS of secondary users stem from lack of attention to the multi-stage periodic behavior of primary users.
机译:由于主用户的动态行为,设计用于认知无线电网络的有效路由协议是至关重要的。基于实证研究,许可通道上的主要用户活动具有多个阶段的周期性,并且主要用户活动模型可能在不同阶段发生变化。本文确定了设计人员面临的两个主要挑战:如何通过稳定路线传输数据包,以及如何确保对主要用户的最小干扰施加最小。为了解决这些问题,我们提出了一种基于Q-Learning的广义版本的路由协议,并利用所述主要用户行为模型。我们将无限时间范围分为循环(对应于周期),然后将每个循环分成几个子周期(对应于阶段),假设主用户活动的统计模型参数在子周期中不会改变。 。广泛的模拟确认我们所提出的路由方法在吞吐量和最小干扰方面优于现有方案。本文还验证了对主要用户的严重干扰和二级用户QoS的劣化源于缺乏关注主要用户的多阶段周期性行为。

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