Detection of DDOS Attack using Decision Tree Classifier in SDN Environment

Nithish Babu S, Yogesh V, Mariswaran S, G. N
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Abstract

Software Defined Networking (SDN) is a dynamic architecture that employs a variety of applications for making networks more adaptable and centrally controlled. It is easy to attack the entire network in SDN because the control plane and data plane are separated. DDoS attack is major danger to SDN service providers because it can shut down the entire network and stop services to all customers at any time. One of the key flaws of most SDN architectures is lack of susceptibility to DDoS attacks with its types like TCP flooding, UDP flooding, SYN flooding, ICMP flooding and DHCP flooding for detecting those kinds of attacks. The machine learning algorithms are widely used in recent years to identify DDoS attacks. This research utilizes Decision Tree Classifier for detection and classification of DDoS attacks on SDN. The Forward Feature Selection technique is also used in the research to select the best features from the dataset and from that dataset the data are employed to train and test the model by Decision Tree Classifier Algorithm. The decision Tree Classifier technique is a supervised method used to forecast desired values of observations using rudimentary machine learning decision rules derived from training data. Based on the accuracy of decision tree techniques, in future, a hybrid learning model will be designed for detecting the Distributed Denial of Services in an SDN environment with high accuracy and a low false negative rate.
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SDN环境下基于决策树分类器的DDOS攻击检测
软件定义网络(SDN)是一种动态架构,采用多种应用程序使网络更具适应性和集中控制。在SDN网络中,由于控制平面和数据平面是分离的,很容易对整个网络进行攻击。DDoS攻击是SDN服务提供商面临的主要威胁,因为它可以随时关闭整个网络并停止对所有客户的服务。大多数SDN架构的关键缺陷之一是缺乏对DDoS攻击的敏感性,其类型如TCP泛洪,UDP泛洪,SYN泛洪,ICMP泛洪和DHCP泛洪来检测这些攻击。近年来,机器学习算法被广泛用于识别DDoS攻击。本研究利用决策树分类器对SDN上的DDoS攻击进行检测和分类。研究中还使用前向特征选择技术从数据集中选择最佳特征,并使用决策树分类器算法对模型进行训练和测试。决策树分类器技术是一种监督方法,用于使用源自训练数据的基本机器学习决策规则来预测观测值的期望值。基于决策树技术的准确性,未来将设计一种混合学习模型来检测SDN环境下的分布式拒绝服务,具有较高的准确率和较低的假阴性率。
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