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首页> 外文期刊>EURASIP journal on advances in signal processing >Detecting Distributed Network Traffic Anomaly with Network-Wide Correlation Analysis
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Detecting Distributed Network Traffic Anomaly with Network-Wide Correlation Analysis

机译:利用全网络相关分析检测分布式网络流量异常

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摘要

Distributed network traffic anomaly refers to a traffic abnormal behavior involving many links of a network and caused by the same source (e.g., DDoS attack, worm propagation). The anomaly transiting in a single link might be unnoticeable and hard to detect, while the anomalous aggregation from many links can be prevailing, and does more harm to the networks. Aiming at the similar features of distributed traffic anomaly on many links, this paper proposes a network-wide detection method by performing anomalous correlation analysis of traffic signals' instantaneous parameters. In our method, traffic signals' instantaneous parameters are firstly computed, and their network-wide anomalous space is then extracted via traffic prediction. Finally, an anomaly is detected by a global correlation coefficient of anomalous space. Our evaluation using Abilene traffic traces demonstrates the excellent performance of this approach for distributed traffic anomaly detection.
机译:分布式网络流量异常是指流量异常行为,它涉及网络的许多链接并由同一源引起(例如DDoS攻击,蠕虫传播)。单个链路中的异常传输可能不明显且难以检测,而来自许多链路的异常聚合可能仍然盛行,并且对网络造成更大危害。针对多链路分布式交通异常的相似特征,提出一种对交通信号瞬时参数进行异常相关分析的全网检测方法。在我们的方法中,首先计算交通信号的瞬时参数,然后通过交通预测提取它们在网络范围内的异常空间。最后,通过异常空间的整体相关系数来检测异常。我们使用Abilene流量跟踪进行的评估证明了这种方法在分布式流量异常检测中的出色性能。

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