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Detecting DDoS Attacks against Web Server Using Time Series Analysis

机译:使用时间序列分析检测针对Web服务器的DDoS攻击

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Distributed Denial of Service (DDoS) attack is a major threat to the availability of Web service. The inherent presence of self-similarity in Web traffic motivates the applicability of time series analysis in the study of the burst feature of DDoS attack. This paper presents a method of detecting DDoS attacks against Web server by analyzing the abrupt change of time series data obtained from Web traffic. Time series data are specified in reference sliding window and test sliding window, and the abrupt change is modeled using Auto-Regressive (AR) process. By comparing two adjacent non-overlapping windows of the time series, the attack traffic could be detected at a time point. Combined with alarm correlation and location correlation, not only the presence of DDoS attack, but also its occurring time and location can be determined. The experimental results in a test environment are illustrated to justify our method.
机译:分布式拒绝服务(DDoS)攻击是Web服务可用性的主要威胁。 Web流量中自相似性的固有存在激发了时间序列分析在DDoS攻击突发特征研究中的适用性。本文提出了一种通过分析从Web流量获得的时间序列数据的突变来检测针对Web服务器的DDoS攻击的方法。在参考滑动窗口和测试滑动窗口中指定了时间序列数据,并使用自动回归(AR)流程对突变进行建模。通过比较时间序列的两个相邻的非重叠窗口,可以在某个时间点检测攻击流量。结合警报关联和位置关联,不仅可以确定DDoS攻击的存在,还可以确定其发生的时间和位置。说明了在测试环境中的实验结果,证明了我们的方法的合理性。

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