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Dynamic Cooperative Spectrum Sensing Based on Deep Multi-User Reinforcement Learning

机译:基于深度多用户增强学习的动态协作频谱感应

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摘要

Dynamic spectrum access (DSA) has been considered as a promising technology to address spectrum scarcity and improve spectrum utilization. Normally, the channels are related to each other. Meanwhile, collisions will be inevitably caused by communicating between multiple PUs or multiple SUs in a real DSA environment. Considering these factors, the deep multi-user reinforcement learning (DMRL) is proposed by introducing the cooperative strategy into dueling deep Q network (DDQN). With no demand of prior information about the system dynamics, DDQN can efficiently learn the correlations between channels, and reduce the computational complexity in the large state space of the multi-user environment. To reduce the conflicts and further maximize the network utility, cooperative channel strategy is explored by utilizing the acknowledge (ACK) signals without exchanging spectrum information. In each time slot, each user selects a channel and transmits a packet with a certain probability. After sending, ACK signals are utilized to judge whether the transmission is successful or not. Compared with other popular models, the simulation results show that the proposed DMRL can achieve better performance on effectively enhancing spectrum utilization and reducing conflict rate in the dynamic cooperative spectrum sensing.
机译:动态频谱接入(DSA)被认为是解决频谱稀缺性并改善频谱利用的有希望的技术。通常,频道彼此相关。同时,通过在真正的DSA环境中在多个PU或多个SUS之间进行通信,碰撞将不可避免地引起。考虑到这些因素,通过将合作策略引入Dueling Deep Q网络(DDQN)来提出深层多用户加强学习(DMRL)。对于有关系统动态的先前信息的要求,DDQN可以有效地学习通道之间的相关性,并降低多用户环境的大状态空间中的计算复杂性。为了减少冲突并进一步最大化网络实用程序,通过利用如果在不交换频谱信息的情况下利用确认(ACK)信号来探索协作信道策略。在每个时隙中,每个用户选择频道并以一定概率发送分组。发送后,利用ACK信号来判断传输是否成功。与其他流行模型相比,仿真结果表明,所提出的DMRL可以在有效提高频谱利用率和减少动态协作频谱感测中的冲突率来实现更好的性能。

著录项

  • 作者

    Shuai Liu; Jing He; Jiayun Wu;

  • 作者单位
  • 年度 2021
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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