基于小波估计控制流量数据包和字节数LRD的异常检测

Khan Zeb, Basil AsSadhan, J. Al-Muhtadi, S. Alshebeili
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引用次数: 7

摘要

在互联网大流量的今天,如何检测小容量攻击和异常等异常行为已经成为网络界的一个难题。为了快速诊断和缓解异常,并恢复由此产生的故障,有效、实时地检测异常流量至关重要。本文提出了一种基于对聚合控制流量中数据包和字节数的远程依赖行为估计的有效异常检测方法。该方法将互联网聚合的整体流量(即控制加数据)替换为聚合的控制流量,并通过对相应控制流量中LRD行为的小波估计来检测异常流量。由于互联网流量在良性正常状态下表现出LRD行为,因此偏离这种行为可能表明存在异常行为。在KSU数据集上的实验表明,该方法不仅通过大幅减少需要处理的大量流量,显著改善了异常检测的过程,而且取得了较高的检测效果。由于控制流量只占整个流量的一小部分,通常大多数攻击都是在控制流量中表现和进行的;因此,用控制流量代替整个流量可以提高检测效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection using Wavelet-based estimation of LRD in packet and byte count of control traffic
The detection of anomalous behavior such as low volume attacks and abnormalities in today's large volume of Internet traffic has become a challenging problem in the network community. An efficient and real-time detection of anomaly traffic is crucial in order to rapidly diagnose and mitigate the anomaly, and to recover the resulting malfunction. In this paper, we present an efficient anomaly detection method based on the estimation of long-range dependence (LRD) behavior in packet and byte count of the aggregated control traffic. This method surrogates Internet aggregated whole traffic (i.e., control plus data) by the aggregated control traffic and detects anomaly traffic through the wavelet-based estimation of LRD behavior in the corresponding control traffic. Since Internet traffic exhibits LRD behavior during benign normal condition, deviation from this behavior can indicate an anomalous behavior. Experiments on the KSU dataset demonstrate that this method not only significantly improves the process of anomaly detection by considerably reducing the large-volume of traffic to be processed but also achieves a high detection effect. Because the control traffic constitute a small fraction of the whole traffic, and usually most of the attacks are manifested and carried out in the control traffic; therefore, surrogating the whole traffic by the control traffic increases the detection efficacy.
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