User traffic profiling

Taimur Bakhshi, B. Ghita
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引用次数: 14

Abstract

Traffic classification and statistical trend analysis are critical steps for workload characterization, capacity planning and network policy configuration in computer networks. Additionally application level traffic classification aids in profiling user traffic based on application usage trends. However, user traffic profiling integration in real-time network resource management remains challenging due to variation in user traffic behaviour, requiring repeated manual configuration updates in traditional fixed topology networks. Software defined networks (SDN) on the other hand, due to their centralized control and real-time programmability of network elements, may offer a potential avenue for application based user traffic profiles to effectively allocate and control network resources. In this paper we evaluate the accuracy of developing meaningful user traffic profiles from application usage trends based on traffic flow analysis using k-means clustering algorithm and explore their applicability to software defined networks for real-time traffic management. The results show a considerable variation in application usage trends and associated network statistics among user traffic profiles leading to further propose implementing per profile flow metering and re-routing of resource intensive traffic profiles via different links for effective real-time network resource management in software defined networks.
用户流量分析
在计算机网络中,流量分类和统计趋势分析是工作负载表征、容量规划和网络策略配置的关键步骤。此外,应用程序级别的流量分类有助于根据应用程序使用趋势分析用户流量。然而,由于用户流量行为的变化,在传统的固定拓扑网络中,用户流量分析集成在实时网络资源管理中仍然具有挑战性,需要反复手动更新配置。另一方面,软件定义网络(SDN)由于其网络元素的集中控制和实时可编程性,可能为基于应用程序的用户流量配置文件提供潜在的途径,以有效地分配和控制网络资源。在本文中,我们评估了基于k-means聚类算法的流量分析,从应用程序使用趋势中开发有意义的用户流量概况的准确性,并探讨了它们在软件定义网络中用于实时流量管理的适用性。结果表明,应用程序使用趋势和用户流量配置文件之间的相关网络统计数据存在相当大的差异,从而进一步提出在软件定义网络中通过不同链路实现每个配置文件流量计量和资源密集型流量配置文件的重路由,以实现有效的实时网络资源管理。
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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