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Performance of Markov models for frame-level errors in IEEE 802.11 wireless LANs

机译:Markov模型针对IEEE 802.11无线局域网中帧级错误的性能

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摘要

Interference among different wireless hosts is becoming a serious issue due to the growing number of wireless LANs based on the popular IEEE 802.11 standard. Thus, an accurate modeling of error paths at the data link layer is indispensable for evaluating system performance and for tuning and optimizing protocols at higher layers. Error paths are usually described looking at sequences of consecutive correct or erroneous frames and at the distributions of their sizes. In recent years, a number of Markov-based stochastic models have been proposed in order to statistically characterize these distributions. Nevertheless, when applied to analyze the data traces we collected, they exhibit several flaws.rnIn this paper, to overcome these model limitations, we propose a new algorithm based on a semi-Markov process, where each state characterizes a different error pattern. The model has been validated by using measures from a real environment. Moreover, we have compared our method with other promising models already available in the literature. Numerical results show that our proposal performs better than the other models in capturing the long-term temporal correlation of real measured traces. At the same time, it is able to estimate first-order statistics with the same accuracy of the other models, but with a minor computational complexity.
机译:由于基于流行的IEEE 802.11标准的无线LAN数量不断增加,不同无线主机之间的干扰正成为一个严重的问题。因此,数据链路层错误路径的准确建模对于评估系统性能以及在更高层调整和优化协议是必不可少的。通常通过查看连续正确或错误帧的序列及其大小分布来描述错误路径。近年来,为了统计表征这些分布,提出了许多基于马尔可夫的随机模型。尽管如此,当用于分析我们收集的数据轨迹时,它们仍存在一些缺陷。在本文中,为了克服这些模型局限性,我们提出了一种基于半马尔可夫过程的新算法,其中每个状态都表征了不同的错误模式。该模型已通过使用来自真实环境的度量进行了验证。此外,我们将我们的方法与文献中已有的其他有希望的模型进行了比较。数值结果表明,我们的建议在捕获实际测量迹线的长期时间相关性方面比其他模型更好。同时,它能够以与其他模型相同的精度估算一阶统计量,但是计算复杂度较低。

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