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A Deep Reinforcement learning based Approach for Channel Aggregation in IEEE 802.11 ax

机译:IEEE 802.11斧头信道聚集的基于深度加强学习方法

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Channel aggregation (CA) is proposed in IEEE 802.11ax to allow wireless users to aggregate multiple available channels, either contiguous or non-contiguous, to improve the network throughput. In this paper, the performance of CA is extensively investigated. It is shown that a simple CA that aggregates all available channels does not always promote but may degrade the network performance due to the increased inter-channel contentions in a random access wireless local area network (WLAN). Thus, it is of critical importance to select an appropriate set of channels for CA. To this end, we propose an efficient probabilistic channel aggregation scheme to maximize the network throughput under the quality of service constraints. That is, an ax user aggregates each secondary channel with a certain probability based on the traffic load of the secondary channel. A Proximal Policy Optimization (PPO) based approach is further applied to intelligently tune the aggregating probabilities of secondary channels to maximize the network throughput. Numerical results show that the proposed algorithm can greatly improve the network throughput compared with existing CA algorithms in the literature.
机译:在IEEE 802.11ax中提出了通道聚合(CA)以允许无线用户聚合多个可用信道,连续或非连续,以提高网络吞吐量。在本文中,广泛研究了CA的性能。结果表明,聚合所有可用通道的简单CA并不总是促进,而是可能降低由于随机接入无线局域网(WLAN)中增加的通道间争议增加而降低了网络性能。因此,选择适当的CA频道是至关重要的。为此,我们提出了一个有效的概率信道聚合方案,以最大化服务限制质量下的网络吞吐量。也就是说,AX用户基于辅助信道的业务负载聚合每个辅助信道,其具有一定概率。基于近端的策略优化(PPO)的方法进一步应用于智能地调整辅助通道的聚合概率,以最大化网络吞吐量。数字结果表明,与文献中的现有CA算法相比,该算法可以大大提高网络吞吐量。

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