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
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
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