基于openflow的软件定义网络的多特征企业流量表征

Taimur Bakhshi
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引用次数: 11

摘要

软件定义网络(SDN)将数据转发平面与控制逻辑解耦,实现了传统组网中难以实现的实时流量工程。SDN环境中突出的南向OpenFlow协议为流量监控提供了直观的手段。然而,基于通用OpenFlow流量测量的统计信息有限,无法表示现代企业SDN中用于构建最优策略的管理兴趣的几个网络参数之间的相关性。本研究调查了企业SDN中网络流量的多维特性,以实现更高的控制粒度,并提供对网络行为的洞察。为此目的,基于OpenFlow的流量统计数据是在两周的时间框架内从一个实际的企业SDN中收集的。流量测量独立地接受无监督聚类分析,以根据应用趋势、每日总流量、流量大小以及空间和时间流量分布得出独特的流量类别。与基本的流级信息相反,跨多个特征的流量分布提供了对网络负载的全面理解,建议在SDN改进的几个领域使用派生的流量类,包括异常检测、能量利用、负载均衡和以用户为中心的策略构建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-feature Enterprise Traffic Characterization in OpenFlow-based Software Defined Networks
Software defined networking (SDN) decouples the data forwarding plane from control logic, enabling real-time traffic engineering, difficult to realize in conventional networking. The prominent southbound OpenFlow protocol used in SDN environments provides an intuitive means for traffic monitoring. Limited statistical information based on generic OpenFlow flow measurements however, fails to represent the correlation among several network parameters of administrative interest, used to construct optimal policies in modern enterprise SDN. The present study investigates the multi-dimensional nature of network traffic in enterprise SDN to realize increased control granularity and provide an insight into network behaviour. OpenFlow based flow statistics are collected for this purpose from a realistic enterprise SDN over a two-week time frame. The flow measurements are independently subjected to unsupervised cluster analysis to derive unique traffic classes based on application trends, aggregate daily traffic volume, flow size, and spatial as well as temporal traffic distribution. Contrary to basic flow-level information, traffic distribution across multiple features provides a comprehensive understanding into the network workload, recommending the utilization of derived traffic classes in several areas of SDN improvement including anomaly detection, energy utilization, load balancing and user-centric policy construction.
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