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Joint routing and channel assignment using online learning in cognitive radio networks

机译:在认知无线电网络中使用在线学习进行联合路由和信道分配

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摘要

Cognitive radio networks (CRNs) are the solution for the problem of underutilizing the licensed spectrum for which there are more requests in the last couple of decades. In CRNs, Secondary users (SUs) are permitted to access opportunistically the licensed spectrum owned by primary users (PUs). In this paper, we address the problem of joint routing and channel assignment for several flows generated by source SUs to a given destination. We consider a more realistic model based on Markov modulated Poisson process for modeling the PUs traffic at each channel and the SUs try to exploit short lived spectrum holes between the PUs packets at the selected channel. The SUs want to cooperatively minimize the end-to-end delay of source SUs flows meanwhile the quality of service requirements of the PUs would be met. To consider partial observation of SUs about PUs activity at all channels and quick adaptation of SUs decisions to environment changes and cooperative interaction of SUs, we use decentralized partially observable markov decision process for modeling the problem. Then, an online learning based scheme is proposed for solving the problem. Simulation results show that the performance of the proposed method and the optimal method is close to each other. Also, simulation results show that the proposed method greatly outperforms related works at control of interference to the PUs while maintains the end-to-end delay of SU flows in a low level.
机译:认知无线电网络(CRN)是针对未充分利用许可频谱的问题的解决方案,在过去的几十年中,对许可频谱的需求越来越多。在CRN中,允许次要用户(SU)机会访问主要用户(PU)拥有的许可频谱。在本文中,我们解决了源SU生成到给定目的地的多个流的联合路由和信道分配问题。我们考虑基于马尔可夫调制泊松过程的更为现实的模型,用于对每个信道的PU流量进行建模,而SU尝试利用选定信道的PU数据包之间的短时频谱空洞。 SU希望合作地最小化源SU的流的端到端延迟,同时将满足PU的服务质量要求。为了考虑对SU进行全渠道PU行为的部分观察,以及SU决策对环境变化的快速适应以及SU的协作相互作用,我们使用分散的可观察的马尔可夫决策过程进行建模。然后,提出了一种基于在线学习的方案来解决该问题。仿真结果表明,该方法与最优方法的性能接近。仿真结果还表明,该方法在控制对PU的干扰方面大大优于相关工作,同时将SU流的端到端延迟保持在较低水平。

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