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Centralized channel and power allocation for cognitive radio networks: A Q-learning solution

机译:认知无线电网络的集中信道和功率分配:Q学习解决方案

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Cognitive radio has been proposed as a novel approach for improving the utilization of the limited radio resources by dynamically changing its operating parameters. This paper deals with the problem of channel and power allocation for cognitive radio networks. In particular, we consider the scenario where the transmission of secondary users is controlled by cognitive base station. We propose an autonomic approach to solve the problem through a form of real-time reinforcement learning known as Q-learning. The secondary users being served and their transmission power on each channel constitute the dynamic environment. Through the “trial-and-error” interaction with its radio environment, the cognitive base station gradually converges to the optimal channel and power allocation policy in a centralized way. Numerical simulation results show that the proposed algorithm can not only realizes the autonomy of channel and power allocation, but also improves system throughput compared to other algorithms.
机译:已经提出认知无线电作为一种通过动态改变其工作参数来提高有限无线电资源利用率的新颖方法。本文研究认知无线电网络的信道和功率分配问题。特别地,我们考虑由认知基站控制次要用户的传输的情况。我们提出了一种通过称为Q学习的实时强化学习形式来解决问题的自主方法。被服务的辅助用户及其在每个信道上的传输功率构成了动态环境。通过与其无线电环境的“试验与错误”交互,认知基站以集中的方式逐渐收敛到最佳信道和功率分配策略。数值仿真结果表明,与其他算法相比,该算法不仅可以实现信道和功率分配的自主性,而且可以提高系统的吞吐量。

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