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Distributed denial of services attack protection system with genetic algorithms on Hadoop cluster computing framework

机译:遗传算法在Hadoop集群计算框架上的分布式拒绝服务攻击防护系统

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DDoS attacks become serious as one of the menaces of the Internet security. It is difficult to prevent because DDoS attacker send spoofing packets to victim which makes the identification of the origin of attacks very difficult. A series of techniques have been studied such as pattern matching by learning the attack pattern and abnormal traffic detection. However, pattern matching approach is not reliable because attackers always set attacks of different traffic patterns and pattern matching approach only learns from the past DDoS data. Therefore, a reliable system has to watch what kind of attacks are carried out now and investigate how to prevent those attacks. Moreover, the amount of traffic flowing through the Internet increase rapidly and thus packet analysis should be done within considerable amount of time. This paper proposes a scalable, real-time traffic pattern analysis based on genetic algorithm to detect and prevent DDoS attacks on Hadoop distributed processing infrastructure. Experimental results demonstrate the effectiveness of our scalable DDoS protection system.
机译:DDOS攻击成为互联网安全的威胁之一。很难预防,因为DDOS攻击者向受害者发送欺骗数据包,这使得识别攻击的起源非常困难。通过学习攻击模式和异常交通检测,已经研究了一系列技术,例如模式匹配。但是,模式匹配方法不可靠,因为攻击者始终设置不同流量模式的攻击,并且模式匹配方法只能从过去的DDOS数据中学习。因此,可靠的系统需要观看现在进行的攻击以及如何调查如何防止这些攻击。此外,流过互联网的流量迅速增加,因此应在相当多的时间内进行分组分析。本文提出了基于遗传算法的可扩展,实时业务模式分析,以检测和防止DDOS攻击Hadoop分布式处理基础设施。实验结果表明了我们可扩展DDOS保护系统的有效性。

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