通过报文到达模式识别flash人群中的DDoS攻击流量

Theerasak Thapngam, Shui Yu, Wanlei Zhou, G. Beliakov
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引用次数: 100

摘要

目前的DDoS攻击主要是通过攻击工具、蠕虫和僵尸网络,利用不同的报文传输策略和各种形式的攻击报文来攻击防御系统。这些问题导致防御系统需要各种检测方法来识别攻击。此外,DDoS攻击可以在闪电人群期间混合流量。这样会导致复杂防御系统无法及时检测到攻击流量。在本文中,我们提出了一种基于行为的检测方法,可以区分DDoS攻击流量和真实用户产生的流量。通过使用Pearson相关系数,我们的比较检测方法可以提取数据包到达的可重复特征。广泛的模拟测试了检测的准确性。然后,我们对几个数据集进行了实验,结果证实了所提出的方法可以快速响应区分攻击源流量和合法流量。在本文的结论中,我们还讨论了改进我们提出的方法的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminating DDoS attack traffic from flash crowd through packet arrival patterns
Current DDoS attacks are carried out by attack tools, worms and botnets using different packet-transmission strategies and various forms of attack packets to beat defense systems. These problems lead to defense systems requiring various detection methods in order to identify attacks. Moreover, DDoS attacks can mix their traffics during flash crowds. By doing this, the complex defense system cannot detect the attack traffic in time. In this paper, we propose a behavior based detection that can discriminate DDoS attack traffic from traffic generated by real users. By using Pearson's correlation coefficient, our comparable detection methods can extract the repeatable features of the packet arrivals. The extensive simulations were tested for the accuracy of detection. We then performed experiments with several datasets and our results affirm that the proposed method can differentiate traffic of an attack source from legitimate traffic with a quick response. We also discuss approaches to improve our proposed methods at the conclusion of this paper.
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