IEEE 802.11ac动态链路自适应:一种基于分布式学习的方法

Raja Karmakar, Samiran Chattopadhyay, Sandip Chakraborty
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引用次数: 17

摘要

基于IEEE 802.11ac的高吞吐量无线接入网络由于空间流数量、信道绑定、保护间隔、帧聚合以及不同的调制和编码方案等设计集池较大,在根据信道条件动态选择链路配置参数方面存在很大的挑战。在本文中,我们开发了一种基于多臂强盗分布式学习算法的链路自适应学习方法。提出的链路自适应算法BanditLink基于观察它们在各种信道条件下对网络性能的影响,探索了不同可能的配置选项。我们从仿真结果中分析了BanditLink的性能,并观察到与文献中提出的其他竞争机制相比,它的性能明显更好。
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Dynamic Link Adaptation in IEEE 802.11ac: A Distributed Learning Based Approach
High throughput wireless access networks based on IEEE 802.11ac show a significant challenge in dynamically selecting the link configuration parameters based on channel conditions due to large pool of design set, like number of spatial streams, channel bonding, guard intervals, frame aggregation and different modulation and coding schemes. In this paper, we develop a learning based approach for link adaptation motivated by the multi-armed bandit based distributed learning algorithm. The proposed link adaptation algorithm, BanditLink, explores different possible configuration options based on observing their impact over the network performance at various channel conditions. We analyze the performance of BanditLink from simulation results, and observe that it performs significantly better compared to other competing mechanisms proposed in the literature.
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