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Deep Reinforcement Learning for Joint Channel Selection and Power Allocation in Cognitive Internet of Things

机译:关于认知互联网联合信道选择和电力分配的深度增强学习

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With the development of wireless communication technology and the lack of spectrum resources, it is very meaningful to study the dynamic spectrum allocation in the cognitive Internet of Things. In this paper, the system model is firstly established. In an underlay mode, considering the interference between primary and secondary users, jointing channel selection and power allocation, aiming to maximize the spectrum efficiency of all secondary users. Different from the traditional heuristic algorithm, the underlay-cognitive-radio-deep-Q-network frame-work (UCRDQN) based on deep reinforcement learning, is proposed to find the optimal solution efficiently. The simulation results show that the UCRDQN algorithm can achieve higher spectrum efficiency and is more stable and efficient than other algorithms.
机译:随着无线通信技术的开发和缺乏频谱资源,研究认知互联网中的动态频谱分配是非常有意义的。在本文中,首先建立了系统模型。在界面模式下,考虑到主用户和辅助用户之间的干扰,连接信道选择和功率分配,旨在最大限度地提高所有辅助用户的频谱效率。不同于传统的启发式算法,提出了基于深度加强学习的底层认知 - 无线电 - 深Q网络帧工作(UCRDQN),以有效地找到最佳解决方案。仿真结果表明,UCRDQN算法可以实现更高的频谱效率,并且比其他算法更稳定和高效。

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