BRAVE:在车辆环境中的比特率适应

P. Deshpande, Samir R Das
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引用次数: 14

摘要

无线网络中的速率选择问题是估计当前信道条件并确定出帧的最佳物理层比特率,以最大限度地提高当前吞吐量。文献中所有的速率自适应算法都是通过考虑最近的历史来估计当前信道条件的,通常以秒为单位。在车载WiFi接入网络中,不断变化的无线信道条件使得信道历史很快变得无关紧要。我们开发了BRAVE -一种基于信噪比的速率自适应算法,它只考虑短历史(500 ms)来做出速率选择决策。我们表明,与之前在每个环境或每个AP基础上训练的方法相反,粗粒度训练方法足以估计速率选择的信噪比阈值。研究了三种基于帧的速率自适应算法和一种流行的基于信噪比的速率自适应算法以及BRAVE,并指出了它们在快速变化的车载WiFi接入环境中的不足。为了比较可重复信道条件下的算法,我们还开发并使用了一种新颖的仿真方法,其中使用基于软件无线电的可编程噪声发生器来模拟车辆移动性下不同的链路质量。研究表明,BRAVE的性能明显优于几种著名的基于帧和基于信噪比的速率自适应算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BRAVE: bit-rate adaptation in vehicular environments
Rate selection in a wireless network is the problem of estimating the current channel conditions and determining the best physical layer bit rate for the outgoing frames in order to maximize the current throughput. All rate adaptation algorithms in literature arrive at an estimate of the current channel conditions by considering the recent history often in the order of seconds. In vehicular WiFi access networks, the constantly changing wireless channel conditions make the channel history quickly irrelevant. We develop BRAVE - an SNR-based rate adaptation algorithm, which only considers short history (500 ms) to make rate selection decisions. We show that a coarse-grained training approach is sufficient to estimate the SNR thresholds for rate selection as opposed to previous approaches that train on a per environment or a per AP basis. We study three frame-based rate adaptation algorithms and a popular SNR-based rate adaptation algorithm along with BRAVE and highlight their shortcomings in the rapidly changing vehicular WiFi access environment. In order to compare the algorithms under repeatable channel conditions, we also develop and use a novel emulation methodology where a software radio-based programmable noise generator is used to emulate varying link quality under vehicular mobility. We show that BRAVE performs significantly better than several prominent frame-based and the SNR-based rate adaptation algorithms.
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