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Use of α-stable self-similar stochastic processes for modeling traffic in broadband networks

机译:使用α稳定自相似随机过程对宽带网络中的流量进行建模

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摘要

In this article, we propose a new model for aggregate network traffic. This model, besides reflecting self-similarity and long-range dependence, is able to capture the appropriate level of burstiness of different types of traffic by selecting the proper parameters. Different types of self-similar traffic traces (LAN/WAN, WWW, VBR video) are analysed by estimating their self-similarity coefficient H, as well as the parameters of their marginal distributions. When comparing the real traces with our artificial traces, the agreement, which was evaluated both qualitatively (visually) and quantitatively (by means of the marginal CDF and the periodogram), is better than that achieved with previously proposed models. By analysing different types of traffic traces, the model is shows to be flexible enough to be applied to a variety of communications scenarios. A queue with our proposed traffic as input is analysed. A proof of convergence of aggregate traffic to α-stable processes is also included, as well as the conditions under which the gaussian assumption is appropriate.
机译:在本文中,我们提出了一种用于汇总网络流量的新模型。该模型除了反映自相似性和远程依赖性外,还可以通过选择适当的参数来捕获不同类型流量的突发性的适当级别。通过估计不同类型的自相似流量迹线(LAN / WAN,WWW,VBR视频),分析它们的自相似系数H以及其边际分布的参数。当将实际痕迹与人工痕迹进行比较时,通过定性(视觉)和定量(通过边际CDF和周期图)进行评估的一致性比以前提出的模型更好。通过分析不同类型的流量跟踪,表明该模型足够灵活,可以应用于各种通信场景。分析了以我们建议的流量为输入的队列。还包括总流量向α稳定过程收敛的证明,以及高斯假设适用的条件。

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