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A utility-based resource allocation scheme for IEEE 802.11 WLANs via a machine-learning approach

机译:通过机器学习方法为IEEE 802.11 WLAN提供基于实用程序的资源分配方案

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摘要

The problem of allocating resources in IEEE 802.11 wireless local area networks (WLAN) is challenging due to limited bandwidth, time-varying channel conditions, and especially the distributed channel-access manner. In this paper we propose an intelligent resource allocation scheme that dynamically adjusts medium-access-control (MAC) parameters to tune channel-access opportunities and maximize the total utility. "Intelligent" refers to the capability of our approach to regulate each 802.11 node's parameters automatically according to the changes of surrounding situations, e.g. channel conditions and number of nodes. Our intelligent allocation scheme uses neural networks to on-line learn the nonlinear function between the adopted MAC parameters and allocated throughput. Based on the learned knowledge, MAC parameters can therefore be dynamically adjusted toward the desired throughput allocation and consequently the maximal WLAN utility. Simulations results demonstrate the effectiveness of our allocation scheme in maximizing the system utility in a varying 802.11 WLAN environment.
机译:由于带宽有限,时变信道状况,尤其是分布式信道访问方式,IEEE 802.11无线局域网(WLAN)中的资源分配问题具有挑战性。在本文中,我们提出了一种智能资源分配方案,该方案可动态调整媒体访问控制(MAC)参数,以调整信道访问机会并最大程度地发挥整体效用。 “智能”是指我们的方法能够根据周围环境的变化自动调节每个802.11节点的参数的能力,例如通道条件和节点数。我们的智能分配方案使用神经网络在线学习所采用的MAC参数和分配的吞吐量之间的非线性函数。因此,基于所学知识,可以针对所需吞吐量分配动态调整MAC参数,从而可以最大程度地调整WLAN利用率。仿真结果证明了我们的分配方案在变化的802.11 WLAN环境中最大化系统实用性的有效性。

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