Adaptive Policing Algorithms on inbound internet traffic using Generalized Pareto model

M. Kassim, Nor Azura Ayop
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引用次数: 2

Abstract

This paper present an analysis of live internet traffic and development of an Adaptive Policing Algorithms to control burst traffic based on fitted traffic model. Objectives of this research is to characterize inbound IP-based campus internet traffic, then traffic is fitted to 2-parameters Cumulative Distribution Function (CDF) traffic model. A Percentage level Policing and algorithm is developed to control the bandwidth used. Open Distribution Fitting application is used to fit to the collected data. Maximum Log likelihood estimation technique is used to fit the best 2-parameter CDF which are Generalized Pareto, Weibull, Normal and Rician distribution model. Results presents best CDF fitted model is Generalized Pareto which present highest maximum likelihood value for this case. Thus, a percentage level of 5% under original bandwidth used is developed on policing algorithms to control internet bandwidth using Pareto traffic model. Result present performances upgraded around 3% to 5% of time processing and approximately 74% of bandwidth saved with Gen Pareto model. This result help to expand the view of new idea in modelling the tele-traffic algorithm based on bandwidth management and time processing improvement. Control algorithms on bandwidth can be developed especially on new Software Defined Network with this algorithms.
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基于广义Pareto模型的互联网入站流量自适应监管算法
本文对实时网络流量进行了分析,提出了一种基于拟合流量模型的自适应监管算法来控制突发流量。本研究的目的是描述基于ip的校园互联网入站流量,然后将流量拟合到2参数累积分布函数(CDF)流量模型。开发了一种百分比级别的警务和算法来控制带宽的使用。开放分布拟合应用程序用于拟合收集的数据。利用最大对数似然估计技术拟合了广义Pareto、Weibull、Normal和ricar分布模型的最佳2参数CDF。结果表明,对于这种情况,最佳的CDF拟合模型是广义Pareto模型,它给出了最大似然值。因此,在使用帕累托流量模型来控制互联网带宽的警务算法中,开发了原始带宽使用下5%的百分比水平。结果显示,使用Gen Pareto模型,目前的性能提升了大约3%到5%的处理时间,节省了大约74%的带宽。该结果为基于带宽管理和时间处理改进的远程通信算法的建模提供了新的思路。利用该算法可以开发出带宽控制算法,特别是在新的软件定义网络中。
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