Usage of Machine Learning Algorithms for Flow Based Anomaly Detection System in Software Defined Networks

Akbaş, M. F., Güngör, C., & Karaarslan, E. (2020, July). Usage of machine learning algorithms for flow based anomaly detection system in software defined networks. In International Conference on Intelligent and Fuzzy Systems (pp. 1156-1163). Springer, Cham.

Posted: 19 Aug 2022

See all articles by Muhammet Fatih Akbaş

Muhammet Fatih Akbaş

Independent

Cengiz Güngör

Independent

Enis Karaarslan

Muğla Sıtkı Koçman University - Department of Artificial Intelligence; Department of Cyber Security

Date Written: July 21, 2020

Abstract

Computer networks are becoming more complex in the number of connected nodes and the amount of traffic. The growing number and increasing complexity of cyber-attacks makes network management and security a challenge. Software defined networks (SDN) technology is a solution that aims for efficient and flexible network management. The SDN controller(s) plays an important role in detecting and preventing cyber-attacks. In this study, a flow-based anomaly detection system running on the POX controller is designed. A comparative analysis of the supervised machine algorithms is given to choose the optimum anomaly detection method in SDN based networks. NSL-KDD dataset is used for training and testing of the classifiers. The results show that machine learning algorithms have great potential in the success of flow-based anomaly detection systems in the SDN infrastructure.

Keywords: Software Defined Networks, Flow-Based Anomaly Detection System, Machine Learning, SDN, AI

Suggested Citation

Akbaş, Muhammet Fatih and Güngör, Cengiz and Karaarslan, Enis, Usage of Machine Learning Algorithms for Flow Based Anomaly Detection System in Software Defined Networks (July 21, 2020). Akbaş, M. F., Güngör, C., & Karaarslan, E. (2020, July). Usage of machine learning algorithms for flow based anomaly detection system in software defined networks. In International Conference on Intelligent and Fuzzy Systems (pp. 1156-1163). Springer, Cham., Available at SSRN: https://ssrn.com/abstract=4180591

Muhammet Fatih Akbaş

Independent

Cengiz Güngör

Independent

Enis Karaarslan (Contact Author)

Muğla Sıtkı Koçman University - Department of Artificial Intelligence ( email )

Muğla
Turkey

Department of Cyber Security ( email )

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