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Multi-Agent Deep Reinforcement Learning Based User Association for Dense mmWave Networks

机译:基于多功能的深度加强学习的密集MMWAVE网络的用户协会

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Finding the optimal association between users and base stations that maximizes the network sum-rate is a complex task. This problem is combinatorial and non-convex, and is even more challenging in millimeter-wave networks due to beamforming, blockages, and severe path loss. Despite the interest that this problem has gained over the last years, the various solutions proposed so far in the literature still fail at being flexible, computationally effective, and suitable to the dynamic nature of mobile networks. This paper addresses these issues with a novel distributed algorithm based on multi-agent reinforcement learning. More specifically, we model each user as an agent, which, at each time step, maps its observations to an action corresponding to an association request to a base station in its coverage range. Our numerical results show that the proposed solution offers near optimal performance and thanks to its flexibility, provides large sum-rate gain with respect to the state-of-art approaches.
机译:找到最大化网络和速率的用户和基站之间的最佳关联是一个复杂的任务。这个问题是组合和非凸,由于波束形成,堵塞和严重的路径损耗,毫米波网络更具挑战性。尽管在过去几年中获得了这个问题的兴趣,但在文献中迄今为止提出的各种解决方案仍然是灵活的,计算的有效性,适合移动网络的动态性质。本文通过基于多档强化学习的新型分布式算法来解决这些问题。更具体地,我们将每个用户建模为代理,在每个时间步骤将其观察映射到与其覆盖范围的基站对应的动作。我们的数值结果表明,拟议的解决方案提供了附近的最佳性能,并因此提供了灵活性,为最先进的方法提供了大的总和增益。

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