基于多项式趋势自相似时间序列预测的网络流量整形

Anatolii Omelchenko, E. A. Rozdymakha, Oleksii V. Fedorovz
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引用次数: 1

摘要

本文讨论了整形算法的发展。基于网络流量预测的整形算法受到了广泛的关注。对不同预测技术下基于预测的整形器效率进行了估计。研究表明,整形算法必须同时考虑流量的过去值和未来值,才能使整形算法的运算效率达到最大。本文提出了一种分形网络流量的自适应线性预测器,并与简单的自回归预测器进行了比较。根据我们的模拟结果,自回归整形器提供了更平滑的输出,而自适应预测器提供了更低的丢包率。
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Network traffic shaping based on prediction of polynomial trend self-similar time series
In the present paper shaping algorithms development is considered. Most attention is paid to shaping algorithms based on network traffic prediction. Estimates of prediction-based shapers efficiency for different forecasting techniques are obtained. It is shown that a shaping algorithm should take into account both the prehistory and future values of the traffic in order to achieve the maximum of its operation efficiency. The paper presents an adaptive linear predictor of the fractal network traffic and compares it to the simple autoregressive predictor. According to our simulation results, the autoregressive shaper grants significantly smoother output while the adaptive predictor grants significantly lower packet loss ratio.
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