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Detect and identify DDoS attacks from flash crowd based on self-similarity and Renyi entropy

机译:基于自相似和仁义熵检测并识别来自闪存人群的DDoS攻击

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The paper presents an effective identification method for DDoS attacks and flash crowd in the source-end network. As DDoS attack and flash crowd behavior dramatically increase the number of new (or forged) source IP addresses, the method firstly construct a time series by counting the number of new (or forged) IP addresses in the monitored local area network, and use VTP (variance-time plots) method to verify its self-similarity in normal environments. Then, whittle estimator is used to calculate Hurst index and its confidence interval to detect anomalies. Based on the detection results, in order to accurately identify these two network behaviors, the paper further proposes Renyi entropy based method to distinguish DDoS attack from flash crowd according to the characteristic that DDoS attack and flash crowd cause different degrees of dispersion in source IP address. Finally experimental results indicate that this method can not only detect the mutation of network traffic in real time and reduce false positives, but also accurately distinguish DDoS attack from flash crowd in the background of large network traffic.
机译:提出了一种有效的识别源端网络中DDoS攻击和闪存人群的方法。随着DDoS攻击和闪存人群行为大大增加了新的(或伪造的)源IP地址的数量,该方法首先通过计算受监视的局域网中新的(或伪造的)IP地址的数量来构建时间序列,并使用VTP (变化时间图)方法来验证其在正常环境下的自相似性。然后,使用惠特估算器计算赫斯特指数及其置信区间以检测异常。根据检测结果,为准确识别这两种网络行为,本文进一步提出了基于Renyi熵的DDoS攻击和Flash人群在源IP地址分散程度不同的特点,以区别DDoS攻击和Flash人群。最终的实验结果表明,该方法不仅可以实时检测网络流量的突变,减少误报,而且可以在网络流量大的背景下,准确地将DDoS攻击与闪存人群区分开。

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