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Joint Power Allocation in Interference-Limited Networks via Distributed Coordinated Learning

机译:通过分布式协调学习在干扰限制网络中的联合电力分配

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Dense deployment of small base stations (SBSs) is one of the main methods to meet the 5G data rate requirements. However, high density of independent SBSs will increase the interference within the network. To circumvent this interference, there is a need to develop self-organizing methods to manage the resources of the network. In this paper, we present a distributed power allocation algorithm based on multi-agent Q-learning in an interference-limited network. The proposed method leverages coordination through simple message passing between SBSs to achieve an optimal joint power allocation. Simulation results show the optimality of the proposed method for a two-user case.
机译:小型基站(SBSS)的密集部署是满足5G数据速率要求的主要方法之一。 然而,高密度的独立SBS将增加网络内的干扰。 为了避免这种干扰,需要开发自组织方法来管理网络的资源。 在本文中,我们介绍了一种基于干扰限制网络中多代理Q学习的分布式功率分配算法。 该方法通过在SBS之间的简单消息中利用协调来实现最佳的关节功率分配。 仿真结果显示了两个用户案例所提出的方法的最优性。

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