End-to-end delay analysis of the IEEE 802.11e with MMPP input-traffic

J. Vardakas, M. Logothetis
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引用次数: 4

Abstract

We investigate the performance of the IEEE 802.11e in respect of end-to-end delay, which is estimated by the sum of queuing delay and MAC delay. The MAC delay analysis is performed based on elementary probability theory (conditional probabilities) while avoiding the complex Markov Chain method. A comprehensive study of the MAC delay is presented by providing higher moments of the MAC delay distribution. To this end, we use the Z-transform of the backoff duration. The first moment corresponds to the mean MAC delay, while the second moment corresponds to the Standard Deviation of the MAC delay; the latter depicts the jitter. We also estimate the probability mass function (pmf) of the MAC delay through the Lattice Poisson Algorithm. As far as the queuing delay is concerned, we provide the mean queuing delay by considering a queuing system with one queue per Access Category (AC) per mobile station, with a single server (the wireless medium), common to all mobile stations, and a Markov Modulated Poisson Process as input, that expresses the bursty nature of Internet traffic. The presented analytical model provides results of the mean end-to-end delay for both saturated and non-saturated channel conditions.
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基于MMPP的IEEE 802.11e端到端时延分析
我们研究了IEEE 802.11e在端到端延迟方面的性能,这是通过队列延迟和MAC延迟的总和来估计的。MAC延迟分析基于初等概率论(条件概率)进行,避免了复杂的马尔可夫链方法。通过提供MAC延迟分布的较高矩,对MAC延迟进行了全面的研究。为此,我们使用后退持续时间的z变换。第一个矩对应于平均MAC延迟,第二个矩对应于MAC延迟的标准差;后者描述了抖动。我们还通过点阵泊松算法估计了MAC延迟的概率质量函数(pmf)。就排队延迟而言,我们通过考虑一个排队系统来提供平均排队延迟,该系统每个移动站每个访问类别(AC)有一个队列,具有所有移动站共用的单个服务器(无线介质),并将马尔可夫调制泊松过程作为输入,表示互联网流量的突发性质。所提出的分析模型提供了饱和和非饱和信道条件下的平均端到端延迟的结果。
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