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基于Command and Control通信信道流量属性聚类的僵尸网络检测方法
引用本文:苏欣,张大方*,罗章琪,曾彬,黎文伟.基于Command and Control通信信道流量属性聚类的僵尸网络检测方法[J].电子与信息学报,2012(8):1993-1999.
作者姓名:苏欣  张大方*  罗章琪  曾彬  黎文伟
作者单位:1. 湖南大学信息科学与工程学院长沙410082
2. 中国移动湖南分公司长沙410015
基金项目:国家自然科学基金项目(61173167,61173168,61070194);国家发改委信息安全专项资助课题
摘    要:僵尸网络(Botnet)是一种从传统恶意代码形态进化而来的新型攻击方式,为攻击者提供了隐匿、灵活且高效的一对多命令与控制信道(Command and Control channel,C&C)机制,可以控制大量僵尸主机实现信息窃取、分布式拒绝服务攻击和垃圾邮件发送等攻击目的。该文提出一种与僵尸网络结构和C&C协议无关,不需要分析数据包的特征负载的僵尸网络检测方法。该方法首先使用预过滤规则对捕获的流量进行过滤,去掉与僵尸网络无关的流量;其次对过滤后的流量属性进行统计;接着使用基于X-means聚类的两步聚类算法对C&C信道的流量属性进行分析与聚类,从而达到对僵尸网络检测的目的。实验证明,该方法高效准确地把僵尸网络流量与其他正常网络流量区分,达到从实际网络中检测僵尸网络的要求,并且具有较低的误判率。

关 键 词:网络检测  聚类  僵尸网络检测  命令与控制信道  流量属性

Botnet Detecting Method Based on Clustering Flow Attributes of Command and Control Communication Channel
Su Xin Zhang Da-fang Luo Zhang-qi Zeng Bin Li Wen-wei.Botnet Detecting Method Based on Clustering Flow Attributes of Command and Control Communication Channel[J].Journal of Electronics & Information Technology,2012(8):1993-1999.
Authors:Su Xin Zhang Da-fang Luo Zhang-qi Zeng Bin Li Wen-wei
Affiliation:Su Xin① Zhang Da-fang① Luo Zhang-qi① Zeng Bin② Li Wen-wei① ①(Information Science and Engineering College Hunan University,Changsha 410082,China) ②(China Mobile Group Hunan Company Limited,Changsha 410015,China)
Abstract:Botnet is a novel attack strategy evolved from traditional malware forms;It provides the attackers stealthy,flexible and efficient one to many Command and Control(C&C) mechanisms,which can be used to order an army of zombies to achieve the goals including information theft,launching Distributed Denial of Service(DDoS),and sending spam.This paper proposed a botnet detecting method which independent of botnet C&C protocol and structure,and not analysis payload of packets.At first this method use pre-filter rules to filter flow which have irrelevant with botnet;Second,the flow attributes are analyzed;Third,two-steps clustering algorithm which based on X-means clustering is used to analyze and cluster flow attributes of C&C channel,and the botnet detection is implemented.The experiment shows that this method can differentiate traffic of botnet and normal network with high accuracy,low false positive,achieve the goal that detects botnet under real network environment.
Keywords:Network detection  Clustering  Botnet detection  Command and Control(C&C) channel  Flow attributes
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