Adaptive and Low-cost Traffic Engineering based on Traffic Matrix Classification

Nan Geng, Mingwei Xu, Yuan Yang, Enhuan Dong, Chenyi Liu
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引用次数: 1

Abstract

Traffic engineering (TE) attracts extensive researches over the years. Operators expect to design a TE scheme which accommodates traffic dynamics well and achieves good TE performance with little overhead. Some approaches like oblivious routing compute an optimal static routing based on a large traffic matrix (TM) range, which usually leads to much performance loss. Many approaches compute routings based on one or a few representative TMs obtained from observed historical TMs. However, they may suffer performance degradation for unexpected TMs and usually induce much overhead of system operating. In this paper, we propose ALTE, an adaptive and low-cost TE scheme based on TM classification. We develop a novel clustering algorithm to properly group a set of historical TMs into several clusters and compute a candidate routing for each TM cluster. A machine learning classifier is trained to infer the proper candidate routing online based on the features extracted from some easily measured statistics. We implement a system prototype of ALTE and do extensive simulations and experiments using both real and synthetic traffic traces. The results show that ALTE achieves near-optimal performance for dynamic traffic and introduces small overhead of routing updates.
基于流量矩阵分类的自适应低成本交通工程
近年来,交通工程引起了广泛的研究。运营商希望设计一种能够很好地适应流量动态的TE方案,并以较小的开销获得良好的TE性能。不经意路由等方法基于较大的流量矩阵(TM)范围计算最优静态路由,这通常会导致很大的性能损失。许多方法基于从观察到的历史TMs中获得的一个或几个具有代表性的TMs来计算路由。然而,对于意外的tm,它们可能会遭受性能下降,并且通常会导致系统操作的大量开销。本文提出了一种基于TM分类的自适应低成本TE方案。我们开发了一种新的聚类算法,将一组历史TM正确地划分为几个簇,并为每个簇计算候选路由。训练机器学习分类器根据从一些容易测量的统计数据中提取的特征在线推断合适的候选路由。我们实现了一个ALTE的系统原型,并使用真实和合成的流量轨迹进行了广泛的模拟和实验。结果表明,ALTE在处理动态流量时达到了近乎最优的性能,并且路由更新的开销很小。
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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