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引用次数: 8
摘要
由于SDN架构的集中控制和可编程能力,网络管理员可以通过集中控制器方便地管理和控制整个网络。在SDN架构下,SDN控制器容易受到DDOS (distributed denial of service)攻击。因此,SDN控制器的故障是安全问题的主要泄漏。因此,本文的目标是使用机器学习算法检测DDOS攻击并对SDN网络中的正常或攻击流量进行分类。在该系统中,利用数据包生成工具scapy和RYU SDN控制器,将多项式支持向量机与现有的线性支持向量机进行比较。实验结果表明,与线性支持向量机相比,多项式支持向量机的准确率提高3%,虚警率降低34%。
Machine-Learning Based DDOS Attack Classifier in Software Defined Network
Due to centralized control and programmable capability of the SDN architecture, network administrators can easily manage and control the whole network through the centralized controller. According to the SDN architecture, the SDN controller is vulnerable to distributed denial of service (DDOS) attacks. Thus, a failure of SDN controller is a major leak for security concern. The objectives of paper is therefore to detect the DDOS attacks and classify the normal or attack traffic in SDN network using machine learning algorithms. In this proposed system, polynomial SVM is applied to compare to existing linear SVM by using scapy, which is packet generation tool and RYU SDN controller. According to the experimental result, polynomial SVM achieves 3% better accuracy and 34% lower false alarm rate compared to Linear SVM.