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Flooding attacks detection and victim identification over high speed networks

机译:高速网络上的洪泛攻击检测和受害者识别

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With the rapid dependency on the internet for business, and the fast spread of powerful destructive DoS/DDoS attack tools, the detection and thwarting of these attacks is primordial for ISP, enterprises, hosting centers, etc. In this paper, we present the implementation of a new framework, for efficient detection and identification of flooding attacks over high speed links. To accomplish that, we apply multi-channel nonparametric CUSUM (MNP-CUSUM) over the shared counters in the proposed reversible sketch, in order to pinpoint flows with abrupt change via a new approach for sketch inversion. Shared counters are used to minimize the memory requirements and to identify the victim of flooding attacks. We apply our system at various real traces, some traces are provided by France Telecom (FT) within the framework of ANR-RNRT OSCAR project, other traces are collected in FT backbone network, during online experiments for testing and adjusting the proposed detection algorithms in this project. Our analysis results from real internet traffic, and from online implementation over Endace DAG 3.6ET sniffing card, show that our proposed architecture is able to quickly detect various kinds of flooding attacks and to disclose culprit flows with a high level of accuracy.
机译:随着业务对互联网的快速依赖以及强大的破坏性DoS / DDoS攻击工具的迅速传播,对这些攻击的检测和阻止对于ISP,企业,托管中心等而言是首要的。在本文中,我们介绍了实现方法一个新框架,用于有效检测和识别高速链路上的洪泛攻击。为此,我们在提议的可逆草图中的共享计数器上应用了多通道非参数CUSUM(MNP-CUSUM),以通过一种新的草图反转方法来精确定位具有突然变化的流。共享计数器用于最大程度地减少内存需求并识别泛洪攻击的受害者。我们将系统应用到各种真实轨迹上,其中一些轨迹是由法国电信(FT)在ANR-RNRT OSCAR项目的框架内提供的,其他轨迹是在FT骨干网中收集的,用于在线实验中测试和调整建议的检测算法。这个项目。我们的分析结果来自实际的互联网流量,以及通过Endace DAG 3.6ET嗅探卡进行在线实施的结果,表明我们提出的体系结构能够快速检测各种泛洪攻击并以高准确度公开罪魁祸首流。

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