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Multiscale queuing analysis of long-range-dependent network traffic

机译:远程相关网络流量的多尺度排队分析

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Many studies have indicated the importance of capturing scaling properties when modeling traffic loads; however, the influence of long-range dependence (LRD) and marginal statistics still remains on an unsure footing. In this paper, we study these two issues by introducing a multiscale traffic model and a novel multiscale approach to queuing analysis. The multifractal wavelet model (MWM) is a multiplicative, wavelet-based model that captures the positivity, LRD, and "spikiness" of non-Gaussian traffic. Using a binary tree, the model synthesizes an N-point data set with only O(N) computations. Leveraging the tree structure of the model, we derive a multiscale queuing analysis that provides a simple closed form approximation to the tail queue probability, valid for any given buffer size. The analysis is applicable not only to the MWM but to tree-based models in general, including fractional Gaussian noise. Simulated queuing experiments demonstrate the accuracy of the MWM for matching real data traces and the precision of our theoretical queuing formula. Thus, the MWM is useful not only for fast synthesis of data for simulation purposes but also for applications requiring accurate queuing formulas such as call admission control. Our results clearly indicate that the marginal distribution of traffic at different time-resolutions affects queuing and that a Gaussian assumption can lead to over-optimistic predictions of tail queue probability even when taking LRD into account.
机译:许多研究表明,在对交通负载进行建模时,获取缩放比例属性非常重要。但是,长期依赖关系(LRD)和边际统计的影响仍然不确定。在本文中,我们通过引入多尺度交通模型和新颖的多尺度排队分析方法来研究这两个问题。多重分形小波模型(MWM)是一种基于小波的乘法模型,可捕获非高斯流量的正性,LRD和“尖峰度”。该模型使用二叉树,仅使用O(N)个计算就可以合成N点数据集。利用模型的树结构,我们得出了多尺度排队分析,该分析提供了对尾部队列概率的简单闭合形式近似,对于任何给定的缓冲区大小均有效。该分析不仅适用于MWM,而且通常适用于基于树的模型,包括分数高斯噪声。模拟排队实验证明了MWM匹配实际数据轨迹的准确性以及我们理论排队公式的准确性。因此,MWM不仅可用于出于仿真目的快速合成数据,而且还可用于需要精确排队公式的应用程序,例如呼叫允许控制。我们的结果清楚地表明,在不同时间分辨率下流量的边际分布会影响排队,并且即使考虑了LRD,高斯假设也会导致尾部排队概率的预测过于乐观。

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