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基于深度报文检测和深度流检测的骨干网流量特征分析
引用本文:杨洁,袁仑,林平,丛蓉,程钢,尼万-安瑟瑞.基于深度报文检测和深度流检测的骨干网流量特征分析[J].中国通信学报,2012,9(5):42-54.
作者姓名:杨洁  袁仑  林平  丛蓉  程钢  尼万-安瑟瑞
摘    要:

收稿时间:2012-07-03;

Characterizing Internet Backbone Traffic Based on Deep Packets Inspection and Deep Flows Inspection
Yang Jie,Yuan Lun,Lin Ping,Cong Rong,Cheng Gang,Nirwan Ansari.Characterizing Internet Backbone Traffic Based on Deep Packets Inspection and Deep Flows Inspection[J].China communications magazine,2012,9(5):42-54.
Authors:Yang Jie  Yuan Lun  Lin Ping  Cong Rong  Cheng Gang  Nirwan Ansari
Institution:1Beijing Key Laboratory of Network System Architecture and Convergence, Beijing University of Posts and Telecommunications, Beijing 100876, P. R. China
2Research Institution of China Mobile, Beijing 100053, P. R. China
3Microsoft Corporation, Redmond, USA
4New Jersey Institute of Technology, Newark, USA
Abstract:Based on the massive data collected with a passive network monitoring equipment placed in China's backbone, we present a deep insight into the network backbone traffic and evaluate various ways for improving traffic classifying efficiency in this paper. In particular, the study has scrutinized the network traffic in terms of protocol types and signatures, flow length, and port distribution, from which meaningful and interesting insights on the current Internet of China from the perspective of both the packet and flow levels are derived. We show that the classification efficiency can be greatly improved by using the information of preferred ports of the network applications. Quantitatively, we find two traffic duration thresholds, with which 40% of TCP flows and 70% of UDP flows can be excluded from classification processing while the impact on classification accuracy is trivial, i.e., the classification accuracy can still reach a high level by saving 85% of the resources.
Keywords:network traffic  traffic characterization  traffic monitoring  packet  flow
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