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Power Control for D2D Communication Using Multi-Agent Reinforcement Learning

机译:使用多档强化学习的D2D通信电源控制

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Device-to-device (D2D) communication is a promising and rapidly evolving technology and it plays a significant role in reducing pressure on the base station. In this paper, we focus on how to achieve the goal of maximizing system throughput by adjusting the transmitted power of each D2D user. Due to the uncertainty of channel states and state transition probabilities, this problem can be modeled as the reinforcement learning (RL) algorithm. We first use the fuzzy clustering algorithm to group D2D users of which the attribute values are in a large dissimilarity so as to reduce interference, then each group is treated as an agent in the RL algorithm. Therefore, a multi-agent RL based on fuzzy clustering algorithm is established. Finally, we verified the superiority of the proposed algorithm through simulations.
机译:设备到设备(D2D)通信是一种有希望的快速发展的技术,并且在减少基站的压力方面起着重要作用。在本文中,我们专注于如何通过调整每个D2D用户的传输功率来实现最大化系统吞吐量的目标。由于信道状态和状态过渡概率的不确定性,该问题可以被建模为增强学习(RL)算法。我们首先使用模糊聚类算法到组D2D用户的组D2D用户,其中属性值处于大的异化,以便减少干扰,然后在R1算法中被视为代理。因此,建立了基于模糊聚类算法的多替代RL。最后,我们通过模拟验证了所提出的算法的优势。

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