应用:基于多项式分布模型的DDoS攻击抵抗方案

Vince Paul, K. Prasadh, Sankaranarayanan
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引用次数: 3

摘要

分布式拒绝服务(DDoS)攻击对互联网构成了日益严重的威胁,最近流行的互联网站点和互联网基础设施都受到了DDoS攻击。令人担忧的是,在大多数大型骨干网络上,每天都可以观察到DDoS攻击。在应用DDoS攻击中,采用高斯分布因子增强抗攻击方案,即使对静止目标也有较好的检测率。利用贝叶斯最优滤波策略,利用各网站周围的闪电人群流量数据的高斯分布进行攻击检测。但是,在网络中使用的应用程序之间分配高斯因子需要花费更多的时间,并且应用程序中服务的安全性也较低。为了提高网络的安全性和服务系数,在本工作中,我们提出了一个多项式分布模型,通过在发送数据包数据流之前分配应用服务来抵抗攻击。首先进行分布,有效地识别出服务异常。多项式分布用于组织将与应用程序服务一起发送的数据包数据。利用Network Simulator进行的仿真结果表明,与现有的基于贝叶斯最优过滤策略的增强抗攻击方案相比,采用多项式分布模型的抗攻击方案最大限度地减少了执行时间、分布和负载开销,提高了应用程序中服务的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application: DDoS Attacks Resistance Scheme Using Polynomial Distribution Model
Distributed Denial of Service (DDoS) attacks pose an increasingly grave threat to the Internet, as evidenced by recent DDoS attacks mounted on both popular Internet sites and the Internet infrastructure. Alarmingly, DDoS attacks are observed on a daily basis on most of the large backbone networks. The previous work presented Gaussian distribution factor to enhance the attack resistance scheme for having better detection rate even for stationary object in the application DDoS attacks. The attack detection is identified with the Gaussian distribution of the traffic data of flash crowds surrounding the respective web sites with Bayes optimal filter strategy. But it consumes more time to distribute the Gaussian factor across the Applications used in the network and the security of services in applications also being less. To improve the security and service factor of the network, in this work, we are going to present a polynomial distribution model for attack resistance scheme by distributing the application services prior to sending the packet data streams. The distribution is done at first, so, the service abnormality is identified efficiently. The polynomial distribution is done for organizing the packet data which is to be sent with application services. The simulation using Network Simulator results proves that the attack resistance using polynomial distribution model minimizes execution time, distribution and load overhead and improves the security of the services present in the application contrast to an existing enhanced attack resistance scheme for app-DDoS attacks using Bayes optimal filter strategy.
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