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Modelling of self-similar teletraffic for simulation

机译:自相似交通量的建模仿真

摘要

Recent studies of real teletraffic data in modern computer networks have shown that teletraffic exhibits self-similar (or fractal) properties over a wide range of time scales. The properties of self-similar teletraffic are very different from the traditional models of teletraffic based on Poisson, Markov-modulated Poisson, and related processes. The use of traditional models in networks characterised by self-similar processes can lead to incorrect conclusions about the performance of analysed networks. These include serious over-estimations of the performance of computer networks, insufficient allocation of communication and data processing resources, and difficulties ensuring the quality of service expected by network users. Thus, full understanding of the self-similar nature in teletraffic is an important issue. Due to the growing complexity of modern telecommunication networks, simulation has become the only feasible paradigm for their performance evaluation. In this thesis, we make some contributions to discrete-event simulation of networks with strongly-dependent, self-similar teletraffic. First, we have evaluated the most commonly used methods for estimating the self-similarity parameter H using appropriately long sequences of data. After assessing properties of available H estimators, we identified the most efficient estimators for practical studies of self-similarity. Next, the generation of arbitrarily long sequences of pseudo-random numbers possessing specific stochastic properties was considered. Various generators of pseudo-random self-similar sequences have been proposed. They differ in computational complexity and accuracy of the self-similar sequences they generate. In this thesis, we propose two new generators of self-similar teletraffic: (i) a generator based on Fractional Gaussian Noise and Daubechies Wavelets (FGN-DW), that is one of the fastest and the most accurate generators so far proposed; and (ii) a generator based on the Successive Random Addition (SRA) algorithm. Our comparative study of sequential and fixed-length self-similar pseudo-random teletraffic generators showed that the FFT, FGN-DW and SRP-FGN generators are the most efficient, both in the sense of accuracy and speed. To conduct simulation studies of telecommunication networks, self-similar processes often need to be transformed into suitable self-similar processes with arbitrary marginal distributions. Thus, the next problem addressed was how well the self-similarity and autocorrelation function of an original self-similar process are preserved when the self-similar sequences are converted into suitable self-similar processes with arbitrary marginal distributions. We also show how pseudo-random self-similar sequences can be applied to produce a model of teletraffic associated with the transmission of VBR JPEG /MPEG video. A combined gamma/Pareto model based on the application of the FGN-DW generator was used to synthesise VBR JPEG /MPEG video traffic. Finally, effects of self-similarity on the behaviour of queueing systems have been investigated. Using M/M/1/∞ as a reference queueing system with no long-range dependence, we have investigated how self-similarity and long-range dependence in arrival processes affect the length of sequential simulations being executed for obtaining steady-state results with the required level of statistical error. Our results show that the finite buffer overflow probability of a queueing system with self-similar input is much greater than the equivalent queueing system with Poisson or a short-range dependent input process, and that the overflow probability increases as the self-similarity parameter approaches one.
机译:现代计算机网络中对实际交通数据的最新研究表明,交通信息在很宽的时间范围内都具有自相似(或分形)特性。自相似电信业务的性质与基于Poisson,Markov调制Poisson以及相关过程的传统电信业务模型非常不同。在以自相似过程为特征的网络中使用传统模型可能导致对所分析网络的性能得出错误的结论。这些包括对计算机网络性能的严重高估,通信和数据处理资源的分配不足以及难以确保网络用户期望的服务质量。因此,充分了解电信业务中的自相似性质是一个重要的问题。由于现代电信网络日益复杂,模拟已成为对其性能评估的唯一可行范例。本文为具有强相关性,自相似电信量的网络的离散事件仿真做出了一些贡献。首先,我们评估了使用适当长数据序列估算自相似参数H的最常用方法。在评估了可用的H估计量的属性之后,我们确定了用于自相似性实际研究的最有效的估计量。接下来,考虑具有特定随机特性的任意长的伪随机数序列的产生。已经提出了伪随机自相似序列的各种生成器。它们在计算复杂度和它们生成的自相似序列的准确性方面有所不同。在本文中,我们提出了两种新的自相似电信业务生成器:(i)基于分数高斯噪声和Daubechies小波(FGN-DW)的生成器,它是迄今为止提出的最快,最准确的生成器之一; (ii)基于连续随机加法(SRA)算法的生成器。我们对顺序和固定长度的自相似伪随机电信业务生成器的比较研究表明,就准确性和速度而言,FFT,FGN-DW和SRP-FGN生成器效率最高。为了进行电信网络的仿真研究,通常需要将自相似过程转换为具有任意边际分布的合适的自相似过程。因此,下一个要解决的问题是当将自相似序列转换为具有任意边际分布的合适自相似过程时,原始自相似过程的自相似和自相关函数得到的保留程度如何。我们还展示了如何使用伪随机自相似序列来生成与VBR JPEG / MPEG视频的传输相关的电话流量模型。基于FGN-DW发生器应用的组合伽玛/帕累托模型用于合成VBR JPEG / MPEG视频流量。最后,研究了自相似性对排队系统行为的影响。使用M / M / 1 /∞作为没有长期依赖关系的参考排队系统,我们研究了到达过程中的自相似性和长期依赖关系如何影响为获得稳态结果而执行的顺序仿真的长度。所需的统计误差水平。我们的结果表明,具有自相似输入的排队系统的有限缓冲区溢出概率要比具有Poisson或短距离相关输入过程的等效排队系统大得多,并且溢出概率随着自相似参数的接近而增加。一。

著录项

  • 作者

    Jeong Hae-Duck Joshua;

  • 作者单位
  • 年度 2002
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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