Towards Detecting Flooding DDOS Attacks Over Software Defined Networks Using Machine Learning Techniques

Author:

Jose Ancy Sherin,Nair Latha R,Paul Varghese

Abstract

Distributed Denial of Service Attack (DDoS) has emerged as a major threat to cyber space. A DDoS attack aims at exhausting the resources of the victim causing financial and reputational damages to it. The availability of free software make launching of DDoS attacks easy. The difficulty in differentiating a DDoS traffic from a legitimate traffic burst such as a flash crowd makes DDoS difficult to be identified. A wide range of techniques have been used in conventional networks to detect and mitigate DDoS attacks. Though the advent of Software Defined Networking (SDN) makes a network easy to be managed even SDN is vulnerable to DDoS attacks. In this case, the controller of the SDN gets overloaded with the incoming packets from the switches. In fact, a solution based on security analytics can be put in place to ward off this threat as a proactive security measure using the flow level statistics available from the SDN. Compared to the packet analysis used in traditional networks which is resource expensive the flow level statistics is relatively inexpensive. This paper focuses on the design and implementation of an attack detection system for detecting the flooding DDoS attacks TCP SYN flooding attacks, HTTP request flooding attacks, UDP flooding attacks and ICMP flooding attacks over SDN network traffic. The system uses various classification algorithms to classify a traffic into normal or attack. The feature sets for classification were arrived at using a feature selection module with ANOVA (Analysis of Variance) F-Test statistical method. Performance evaluation of each of the classifiers was carried out for the three feature sets obtained from the feature selection module using various performance measures and the results have been tabulated. The feature set which gives the best performance in detecting malicious traffic has been identified.

Publisher

Centivens Institute of Innovative Research

Cited by 7 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Distributed Denial of Service (DDOS) Attack Detection Using Classification Algorithm;2024 International Conference on Advances in Data Engineering and Intelligent Computing Systems (ADICS);2024-04-18

2. CNN-LSTM Model for Mitigation of DDoS Attacks in Software-Defined Networks;2024 International Conference on Science, Engineering and Business for Driving Sustainable Development Goals (SEB4SDG);2024-04-02

3. Hybrid Learning Blockchain assisted approach to Secure Software Defined Networks;GLOBECOM 2023 - 2023 IEEE Global Communications Conference;2023-12-04

4. Ensemble of deep reinforcement learning with optimization model for DDoS attack detection and classification in cloud based software defined networks;Multimedia Tools and Applications;2023-09-21

5. Ensembled Machine Learning Techniques for DDoS Detection in SDN;Lecture Notes in Networks and Systems;2023

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