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Dynamic Spectrum Access in Cognitive Radio Networks Using Deep Reinforcement Learning and Evolutionary Game

机译:使用深度强化学习和进化博弈的认知无线电网络中的动态频谱访问

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With the rapid development of wireless communication technology, the low utilization of spectrum resources and the high demand for spectrum have always been an urgent and paradoxical problem to be resolved. In order to alleviate this conflict, cognitive radio technology has been proposed. In this paper, we propose a new method of distributed multi-user dynamic spectrum access in cognitive radio network through combining deep reinforcement learning with evolutionary game theory. This method utilizes the Deep Q-network (DQN) as the main framework, and each user independently performs DQN algorithm to select channel. Through dynamic spectrum management, the utilization of spectrum resources can be effectively improved. In addition, we introduce the replicator dynamic using evolutionary game theory into the setting of the reward function for reinforcement learning, so as to effectively balance the collaboration among users. The simulation results show that the proposed algorithm can significantly reduce the collision rate of cognitive users and effectively increase the system capacity.
机译:随着无线通信技术的飞速发展,频谱资源的低利用率和对频谱的高需求一直是亟待解决的矛盾问题。为了减轻这种冲突,已经提出了认知无线电技术。本文将深度强化学习与进化博弈论相结合,提出了一种认知无线电网络中分布式多用户动态频谱接入的新方法。该方法利用深度Q网络(DQN)作为主要框架,每个用户独立执行DQN算法来选择频道。通过动态频谱管理,可以有效地提高频谱资源的利用率。此外,我们将使用进化博弈论的复制器动态引入强化学习奖励函数的设置中,从而有效地平衡了用户之间的协作。仿真结果表明,该算法可以显着降低认知用户的碰撞率,有效提高系统容量。

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