Fast simulation for self-similar traffic in ATM networks

Changcheng Huang, M. Devetsikiotis, I. Lambadaris, A. Kaye
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引用次数: 64

Abstract

Self-similar (or fractal) stochastic processes were proposed as more accurate models of certain categories of traffic (e.g., Ethernet traffic, variable-bit-rate video) which will be transported in ATM networks. Existing analytical results for the tail distribution of the waiting time in a single server queue based on fractional Gaussian noise and large deviation theory, are valid under a steady-state regime and for an asymptotically large buffer size. However, the predicted performance based on steady-state regimes may be overly pessimistic for practical applications. Theoretical approaches used to obtain the transient queueing behavior and queueing distributions for a small buffer size become quickly intractable. The approach we followed was based on fast simulation techniques for the study of certain rare events such as cell losses with very small probability of occurrence. Our simulation experiments provide an insight on the transient behavior that is not possible to predict using current analytical results. Finally they show good agreement with existing results when approaching steady-state.
ATM网络中自相似流量的快速仿真
自相似(或分形)随机过程被提出作为在ATM网络中传输的某些类别的流量(例如,以太网流量,可变比特率视频)的更精确的模型。现有的基于分数阶高斯噪声和大偏差理论的单服务器队列等待时间尾部分布的分析结果,在稳态状态和渐近大的缓冲区大小下是有效的。然而,在实际应用中,基于稳态状态的预测性能可能过于悲观。用于获得小缓冲区大小的瞬态排队行为和排队分布的理论方法很快变得难以处理。我们采用的方法是基于快速模拟技术来研究某些罕见事件,例如发生概率非常小的细胞损失。我们的模拟实验提供了对暂态行为的洞察,这是不可能预测使用当前的分析结果。最后,在接近稳态时,与已有结果吻合较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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