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Detection of DDoS Attacks via an Artificial Immune System-Inspired Multiobjective Evolutionary Algorithm

机译:通过人工免疫系统启发的多目标进化算法检测DDoS攻击

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A Distributed Denial of Service Attack is a coordinated attack on the availability of services of a victim system, launched indirectly through many compromised computers. Intrusion detection systems (IDS) are network security tools that process local audit data or monitor network traffic to search for specific patterns or certain deviations from expected behavior. We use an Artificial Immune System (AIS) as a method of anomaly-based IDS because of the similarity between the IDS architecture and the Biological Immune Systems. We improved the jREMISA study; a Multiobjective Evolutionary Algorithm inspired AIS, in order to get better true and false positive rates while detecting DDoS attacks on the MIT DARPA LLDOS 1.0 dataset. We added the method of r-continuous evaluations, changed the Negative Selection and Clonal Selection structure, and redefined the objectives while keeping the general concepts the same. The 100% true positive rate and 0% false positive rate of our approach, under the given parameter settings and experimental conditions, shows that it is very successful as an anomaly-based IDS for DDoS attacks.
机译:分布式拒绝服务攻击是对受害系统的服务可用性的协同攻击,它是通过许多受感染的计算机间接发起的。入侵检测系统(IDS)是网络安全工具,可处理本地审核数据或监视网络流量以搜索特定模式或与预期行为的某些偏差。由于IDS体系结构和生物免疫系统之间的相似性,我们将人工免疫系统(AIS)用作基于异常的IDS的方法。我们改进了jREMISA研究;一种多目标进化算法启发了AIS,以便在检测MIT DARPA LLDOS 1.0数据集上的DDoS攻击时获得更好的真假肯定率。我们添加了r连续评估的方法,更改了“否定选择”和“克隆选择”结构,并重新定义了目标,同时保持了基本概念不变。在给定的参数设置和实验条件下,我们的方法的100%正确率和0%错误率表明,它作为DDoS攻击的基于异常的IDS非常成功。

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