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Reinforcement-Learning-Based Double Auction Design for Dynamic Spectrum Access in Cognitive Radio Networks

机译:基于增强学习的认知无线电网络中动态频谱访问的双拍卖设计

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摘要

In cognitive radio networks, an important issue is to share the detected available spectrum among different secondary users to improve the network performance. Although some work has been done for dynamic spectrum access, the learning capability of cognitive radio networks is largely ignored in the previous work. In this paper, we propose a reinforcement-learning-based double auction algorithm aiming to improve the performance of dynamic spectrum access in cognitive radio networks. The dynamic spectrum access process is modeled as a double auction game. Based on the spectrum access history information, both primary users and secondary users can estimate the impact on their future rewards and then adapt their spectrum access or release strategies effectively to compete for channel opportunities. Simulation results show that the proposed reinforcement-learning-based double auction algorithm can significantly improve secondary users' performance in terms of packet loss, bidding efficiency and transmission rate or opportunity access.
机译:在认知无线电网络中,一个重要的问题是在不同的辅助用户之间共享检测到的可用频谱,以提高网络性能。尽管已经为动态频谱访问做了一些工作,但是认知无线电网络的学习能力在先前的工作中被很大程度上忽略了。在本文中,我们提出了一种基于增强学习的双重拍卖算法,旨在提高认知无线电网络中动态频谱访问的性能。动态频谱访问过程被建模为双重拍卖游戏。根据频谱访问历史信息,主要用户和次要用户都可以估计对其未来奖励的影响,然后有效地调整其频谱访问或发布策略以竞争信道机会。仿真结果表明,所提出的基于强化学习的双拍卖算法可以从丢包,竞价效率,传输速率或机会获取等方面显着提高二级用户的性能。

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