自适应IP溯源机制,用于检测低速率DDoS攻击

M. Baskar, T. Gnanasekaran, S. Saravanan
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引用次数: 12

摘要

分布式拒绝服务(DDoS)攻击被认为是对网络的重大威胁。由于网络路由机制的内存较少的特性,跟踪这些攻击的来源是非常繁重的。古老的数据包标记技术由于其高内存消耗和较差的可测量性而不再被应用。在本文中,我们倾向于使用熵变来观察区分传统攻击和DDoS攻击流量的攻击。然而,它将仅用于观察攻击期间的流量是难以置信的高速率。还有许多攻击期间,攻击的强度也很微薄,但这些攻击的结果可能仍然很严重。因此,有必要观察这种攻击,以较低的信息率来衡量。我们倾向于提出一种能够检测DDoS攻击的自适应攻击检测系统(AADS),无论攻击强度如何。
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Adaptive IP traceback mechanism for detecting low rate DDoS attacks
Distributed Denial of Service (DDoS) attacks is measured to be a vital threat to the net. Because of memory less feature of the net routing mechanism, it's extraordinarily onerous to trace back to the supply of those attacks. Ancient packet marking techniques are not any longer applied because of its high memory consumption and poor measurability. During this paper, we have a tendency to build use of entropy variation to observe the attack that differentiates between traditional and DDoS attack traffic. However it will solely be applied to observe the attack during which rate of the traffic flow is incredibly high. There are also many attacks during which the strength of the attack is also meager, however the results of those attacks might be still severe. So it's essential to observe such attacks that square measure in lower order in terms of information rate. We have a tendency to propose an Adaptive Attack Detection System (AADS) that is capable of detection DDoS attacks regardless of the attack strength.
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