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DDoS Attack Detection at Local Area Networks Using Information Theoretical Metrics

机译:使用信息理论度量的地方区域网络的DDOS攻击检测

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DDoS attacks are one of the major threats to Internet services. Sophisticated hackers are mimicking the features of legitimate network events, such as flash crowds, to fly under the radar. This poses great challenges to detect DDoS attacks. In this paper, we propose an attack feature independent DDoS flooding attack detection method at local area networks. We employ flow entropy on local area network routers to supervise the network traffic and raise potential DDoS flooding attack alarms when the flow entropy drops significantly in a short period of time. Furthermore, information distance is employed to differentiate DDoS attacks from flash crowds. In general, the attack traffic of one DDoS flooding attack session is generated by many bots from one botnet, and all of these bots are executing the same attack program. As a result, the similarity among attack traffic should higher than that among flash crowds, which are generated by many random users. Mathematical models have been established for the proposed detection strategies. Analysis based on the models indicates that the proposed methods can raise the alarm for potential DDoS flooding attacks and can differentiate DDoS flooding attacks from flash crowds with conditions. The extensive experiments and simulations confirmed the effectiveness of our proposed detection strategies.
机译:DDOS攻击是互联网服务的主要威胁之一。复杂的黑客正在模仿合法的网络事件,例如闪存人群,在雷达下飞行。这造成了检测DDOS攻击的巨大挑战。在本文中,我们提出了一种在局域网中独立DDOS泛滥攻击检测方法的攻击。我们在局域网路由器上采用流熵,以监督网络流量,并在短时间内流动熵显着下降时提高潜在的DDOS泛滥攻击警报。此外,采用信息距离来区分从闪存人群中的DDOS攻击。通常,一个DDOS泛洪攻击会话的攻击流量由一个僵尸网络的许多机器人产生,所有这些机器人都正在执行相同的攻击程序。结果,攻击流量之间的相似性应高于闪存人群中的相似性,这些闪存人群由许多随机用户产生。已经为提出的检测策略建立了数学模型。基于模型的分析表明,该方法可以提高潜在DDOS泛滥攻击的警报,并可以将DDOS泛滥攻击与条件不同。广泛的实验和模拟证实了我们提出的检测策略的有效性。

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