实时网络流量分析系统

Kuai Xu, Feng Wang, S. Bhattacharyya, Zhi-Li Zhang
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引用次数: 18

摘要

本文介绍了一种用于高速互联网链路的实时行为分析系统的设计与实现。分析系统利用连续数据包或流量监控系统的流级信息,利用数据挖掘和信息论技术,根据终端主机的通信模式自动发现重要事件。我们通过实现该系统并使用互联网骨干网中OC-48链路的各种数据包跟踪对CPU和内存成本进行广泛的基准测试,来证明该系统的操作可行性。为了提高该系统对突发流量激增(如拒绝服务攻击或蠕虫爆发)的鲁棒性,我们提出了一种简单而有效的过滤算法。该算法成功地降低了CPU和内存成本,同时保持了较高的分析精度。
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A Real-Time Network Traffic Profiling System
This paper presents the design and implementation of a real-time behavior profiling system for high-speed Internet links. The profiling system uses flow-level information from continuous packet or flow monitoring systems, and uses data mining and information-theoretic techniques to automatically discover significant events based on the communication patterns of end-hosts. We demonstrate the operational feasibility of the system by implementing it and performing extensive benchmarking of CPU and memory costs using a variety of packet traces from OC-48 links in an Internet backbone network. To improve the robustness of this system against sudden traffic surges such as those caused by denial of service attacks or worm outbreaks, we propose a simple yet effective filtering algorithm. The proposed algorithm successfully reduces the CPU and memory cost while maintaining high profiling accuracy.
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