基于聚合流的交通特征分布统计分析

Yudha Purwanto, Kuspriyanto, Hendrawan, B. Rahardjo
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引用次数: 1

摘要

异常流量检测是检测网络攻击尤其是分布式拒绝服务攻击的一种方法。其中,流量分析是基于流量分析做出异常决策的关键环节,它揭示了观测到的交通模式。本研究对正常攻击、DDoS攻击和flashcrowd三种流量数据集进行了统计分析。在汇总和每流流量水平上进行的分析显示了每个类别的相似性和差异性。窗技术用于测量瞬时统计值。结果显示出一些统计差异,这些差异可以用于异常类型的分类,特别是用于正常阈值的识别。流量向正态平均流距分布不服从高斯分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical analysis on aggregate and flow based traffic features distribution
Anomaly traffic detection is one method to detect attack in internet, especially Distributed Denial of Service (DDoS). Here, traffic analysis which reveal the observed traffic pattern is key important process as the anomaly decision was taken based on traffic analysis. This research analyzed several statistical analysis of traffic datasets categorized as normal, DDoS attack and flashcrowd. Analysis done in aggregate and per-flow traffic level which showed similarity and difference in each category. Windowing technic used to measure instantaneous statistical value. The result showed several statistical difference which could be used to categorized types of anomaly, especially to identify normal threshold. Flow to normal average flow distance distribution perform not followed Gaussian distribution.
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