Adaptive sampling methods to determine network traffic statistics including the Hurst parameter

J. Drobisz, Kenneth J. Christensen
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引用次数: 36

Abstract

Accurate traffic characterization by a packet source is needed to predict the network behavior and to properly allocate network resources to achieve a desired quality of service for all network users. As networks have become faster, the processing load required for complete packet sampling has also grown. In some cases, for example Gigabit Ethernet, the network can deliver packets faster than a network management subsystem can process them. In order to prevent inaccurate traffic statistics due to "clipping" of traffic peaks, Claffy et al. (1993) applied several static sampling strategies to network traffic characterization. As shown in this paper, static sampling may produce inaccurate traffic statistics. Adaptive sampling methods are developed and evaluated to address the inaccuracies of static sampling. In addition, the estimation of the Hurst parameter, a measure of traffic self-similarity, is studied for static and adaptive sampling. It is shown that adaptive sampling results in a more accurate estimation of the mean, variance, and Hurst parameter for packet counts.
自适应采样方法,确定网络流量统计包括赫斯特参数
为了预测网络行为和合理分配网络资源,从而为所有网络用户提供理想的服务质量,需要对数据包源进行准确的流量表征。随着网络变得越来越快,完成数据包采样所需的处理负载也在增加。在某些情况下,例如千兆以太网,网络传送数据包的速度比网络管理子系统处理它们的速度要快。Claffy等人(1993)为了防止由于流量峰值的“裁剪”而导致流量统计不准确,在网络流量表征中应用了几种静态采样策略。如本文所示,静态抽样可能产生不准确的流量统计。自适应采样方法的发展和评估,以解决静态采样的不准确性。此外,研究了静态采样和自适应采样下交通自相似度量Hurst参数的估计问题。结果表明,自适应采样可以更准确地估计包计数的均值、方差和Hurst参数。
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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