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首页> 外文期刊>Procedia Computer Science >DDoS Attack Detection Using Fast Entropy Approach on Flow- Based Network Traffic
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DDoS Attack Detection Using Fast Entropy Approach on Flow- Based Network Traffic

机译:基于快速熵方法的基于流的网络流量DDoS攻击检测

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Denial of service attack and Distributed Denial of Service attacks are becoming an increasingly frequent disturbance of the global Internet. In this paper we propose improvement in detection of Distributed Denial of Service attacks based on fast entropy method using flow-based analysis. An adaptive threshold algorithm is made use of since both network activities and user's behavior could vary over time. Fast Entropy and flow-based analysis show significant reduction in computational time compared to conventional entropy computation while maintaining good detection accuracy. The network traffic is analyzed and fast entropy of request per flow is calculated. DDoS attack is detected when the difference between entropy of flow count at each instant and mean value of entropy in that time interval is greater than the threshold value that is updated adaptively based on traffic pattern condition to improve the detection accuracy.
机译:拒绝服务攻击和分布式拒绝服务攻击正日益成为对全球Internet的干扰。在本文中,我们提出了基于基于流的分析的基于快速熵方法的分布式拒绝服务攻击检测的改进。利用自适应阈值算法是因为网络活动和用户行为都可能随时间变化。与传统的熵计算相比,快速熵和基于流的分析显示出计算时间的显着减少,同时保持了良好的检测精度。分析网络流量,并计算每个流的请求的快速熵。当每个瞬时流量计数的熵与该时间间隔内的熵平均值之间的差大于阈值时,即检测到DDoS攻击,该阈值会根据流量模式条件进行自适应更新以提高检测精度。

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