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Home / Archives / Volume-5 / Issue-2 / Article-6

Volume - 5 | Issue - 2 | june 2023

Detection of DDOS Attack using Decision Tree Classifier in SDN Environment Open Access
Nithish Babu S  , Yogesh V, Mariswaran S, Gowtham N  103
Pages: 193-202
Cite this article
S, Nithish Babu, Yogesh V, Mariswaran S, and Gowtham N. "Detection of DDOS Attack using Decision Tree Classifier in SDN Environment." Journal of Ubiquitous Computing and Communication Technologies 5, no. 2 (2023): 193-202
DOI
10.36548/jucct.2023.2.006
Published
30 June, 2023
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.

Keywords

SDN DDOS Decision Tree Classifier Feature selection Forward feature selection

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