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A predictability analysis of network traffic

机译:网络流量的可预测性分析

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摘要

This paper assesses the predictability of network traffic by considering two metrics: (1) how far into the future a traffic rate process can be predicted for a given error constraint; (2) what the minimum prediction error is over a specified prediction time interval. The assessment is based on two stationary traffic models: the auto-regressive moving average (ARMA) model and the Markov-modulated Poisson process (MMPP) model. Our study in this paper provides an upper bound for the optimal performance of online traffic prediction. The analysis reveals that the application of traffic prediction is limited by the quickly deteriorating prediction accuracy with increasing prediction interval. Furthermore, we show that different traffic properties play different roles in predictability. Traffic smoothing (low-pass filtering) and statistical multiplexing also improves predictability. In particular, experimental results suggest that traffic prediction works better for backbone network traffic, or when short-term traffic variations have been properly filtered out. Moreover, this paper illustrates the various factors affecting the effectiveness of traffic prediction in network control. These factors include the traffic characteristics, the traffic measurement intervals, the network control time-scale, and the utilization target of network resources. Considering all of the factors, we present guidelines for utilizing and evaluating traffic prediction in network control areas.
机译:本文通过考虑两个指标来评估网络流量的可预测性:(1)对于给定的错误约束,可以预测到将来的流量速率过程; (2)在指定的预测时间间隔内最小预测误差是多少。该评估基于两个固定交通模型:自回归移动平均(ARMA)模型和马尔可夫调制泊松过程(MMPP)模型。我们的研究为在线流量预测的最佳性能提供了一个上限。分析表明,随着预测间隔的增加,交通预测的应用受到迅速恶化的预测准确性的限制。此外,我们证明了不同的流量属性在可预测性中扮演着不同的角色。流量平滑(低通滤波)和统计多路复用还提高了可预测性。特别是,实验结果表明,流量预测对于骨干网络流量或短期流量变化已被正确滤除的效果更好。此外,本文说明了影响网络控制中流量预测有效性的各种因素。这些因素包括流量特性,流量测量间隔,网络控制时标和网络资源的使用目标。考虑到所有因素,我们提出了在网络控制区域中利用和评估流量预测的准则。

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