基于Hurst指数的DDoS攻击实时检测

Ying Ling, Chunyan Yang, Xin Li, Ming Xie, Shaofeng Ming, Jieke Lu, Fuchuan Tang
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引用次数: 0

摘要

DDoS被认为是对软件定义网络(SDN)最危险的攻击和威胁。现有的缓解技术有流量法、熵法和流量分析法。它们依靠流量采样来实现真正的实时内联DDoS检测精度。但是,基于流量抽样的方法成本很高。早期检测控制器中的DDoS攻击是非常重要的,这需要高度自适应和精确的方法。为此,本文提出了一种基于hurst指数的有效、准确的实时DDoS攻击检测技术。简要分析了DDoS攻击的主要检测方法以及DDoS攻击发生时的流量特征。讨论了Hurst指数估计方法及其在DDoS攻击实时检测中的应用。最后,对仿真实验测试分析进行了改进,验证了基于hurst指标的DDoS攻击RTD的有效性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time Detection of DDoS Attacks Based on Hurst Index
DDoS is considered as the most dangerous attack and threat to software defined network (SDN). The existing mitigation technologies include flow capacity method, entropy method and flow analysis method. They rely on traffic sampling to achieve true real-time inline DDoS detection accuracy. However, the cost of the method based on traffic sampling is very high. Early detection of DDoS attacks in the controller is very important, which requires highly adaptive and accurate methods. Therefore, this paper proposes an effective and accurate real-time DDoS attack detection technology based on hurst index. The main detection methods of DDoS attacks and the traffic characteristics when DDoS attacks occur are briefly analyzed. The Hurst exponent estimation method and its application in real-time detection (RTD) of DDoS attacks are discussed. Finally, the simulation experiment test analysis is improved to verify the effectiveness and feasibility of RTD of DDoS attacks based on hurst index.
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