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Throughput optimization of wireless LANs by surrogate model based cognitive decision making

机译:通过基于替代模型的认知决策来优化无线局域网的吞吐量

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Large scale growth of wireless networks and the scarcity of the electromagnetic spectrum are imposing more interference to the wireless terminals which jeopardize the Quality of Service offered to the end users. In order to address this kind of performance degradation, this paper proposes a novel experimentally verified cognitive decision engine which aims at optimizing the throughput of IEEE 802.11 links in presence of homogeneous IEEE 802.11 interference. The decision engine is based on a surrogate model that takes the current state of the wireless network as input and makes a prediction of the throughput. The prediction enables the decision engine to find the optimal configuration of the controllable parameters of the network. The decision engine was applied in a realistic interference scenario where utilization of the cognitive decision engine outperformed the case where the decision engine was not deployed by a worst case improvement of more than 100%.
机译:无线网络的大规模发展和电磁频谱的稀缺正在对无线终端施加更多的干扰,这危害了提供给最终用户的服务质量。为了解决这种性能下降问题,本文提出了一种经过实验验证的新颖认知决策引擎,旨在优化在存在同质IEEE 802.11干扰的情况下优化IEEE 802.11链路的吞吐量。决策引擎基于代理模型,该代理模型将无线网络的当前状态作为输入并预测吞吐量。该预测使决策引擎能够找到网络可控制参数的最佳配置。在现实的干扰情况下使用决策引擎,在这种情况下,认知决策引擎的利用率优于未部署决策引擎的情况,最坏情况的改善超过100%。

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