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首页> 外文期刊>IEEE Transactions on Cognitive Communications and Networking >Optimizing Throughput Performance in Distributed MIMO Wi-Fi Networks Using Deep Reinforcement Learning
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Optimizing Throughput Performance in Distributed MIMO Wi-Fi Networks Using Deep Reinforcement Learning

机译:利用深增强学习优化分布式MIMO Wi-Fi网络中的吞吐量性能

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This paper explores the feasibility of leveraging deep reinforcement learning (DRL) to enable dynamic resource management in Wi-Fi networks implementing distributed multi-user MIMO (D-MIMO). D-MIMO is a technique by which a set of wireless access points are synchronized and grouped together to jointly serve multiple users simultaneously. This paper addresses two dynamic resource management problems germane to D-MIMO Wi-Fi networks: (i) channel assignment of D-MIMO groups, and (ii) deciding how to cluster access points to form D-MIMO groups, in order to maximize user throughput performance. These problems are known to be NP-Hard and only heuristic solutions exist in literature. We construct a DRL framework through which a learning agent interacts with a D-MIMO Wi-Fi network, learns about the network environment, and successfully converges to policies which address the aforementioned problems. Through extensive simulations and on-line training based on D-MIMO Wi-Fi networks, this paper demonstrates the efficacy of DRL agents in achieving an improvement of 20% in user throughput performance compared to heuristic solutions, particularly when network conditions are dynamic. This work also showcases the effectiveness of DRL agents in meeting multiple network objectives simultaneously, for instance, maximizing throughput of users as well as fairness of throughput among them.
机译:本文探讨了利用深度加强学习(DRL)的可行性,以实现实现分布式多用户MIMO(D-MIMO)的Wi-Fi网络中的动态资源管理。 D-MIMO是一种技术,通过该技术,通过该技术将一组无线接入点同步并分组在一起,以同时共同为多个用户共同服务。本文向D-MIMO Wi-Fi网络提供了两个动态资源管理问题:(i)D-MIMO组的通道分配,并决定如何群集接入点以形成D-MIMO组,以便最大化用户吞吐量性能。已知这些问题是NP - 硬,只有文献中存在的启发式解决方案。我们构建一个DRL框架,学习代理与D-MIMO Wi-Fi网络进行交互,了解网络环境,并成功收敛到解决上述问题的策略。通过基于D-MIMO Wi-Fi网络的广泛模拟和在线训练,本文展示了与启发式解决方案相比,DRL代理在用户吞吐量性能方面提高了20%的效果,特别是当网络条件是动态的时,尤其是当网络条件是动态的。这项工作还展示了DRL代理同时满足多个网络目标的有效性,例如,最大化用户的吞吐量以及它们之间的吞吐量公平性。

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