Publication | Closed Access
A New Machine Learning-based Collaborative DDoS Mitigation Mechanism in Software-Defined Network
49
Citations
12
References
2018
Year
Unknown Venue
Network FlowsEngineeringSoftware Defined NetworkData ScienceSoftware-defined NetworkingEdge ComputingDdos DetectionCloud ComputingDenial-of-service AttackSoftware-defined NetworkComputer ScienceInternet Of ThingsBotnet DetectionSoftware Defined SecurityAdvanced NetworkingSoftware-driven Network
Software Defined Network (SDN) is a revolutionary idea to realize software-driven network with the separation of control and data planes. In essence, SDN addresses the problems faced by the traditional network architecture; however, it may as well expose the network to new attacks. Among other attacks, distributed denial of service (DDoS) attacks are hard to contain in such software-based networks. Existing DDoS mitigation techniques either lack in performance or jeopardize the accuracy of the attack detection. To fill the voids, we propose in this paper a machine learning-based DDoS mitigation technique for SDN. First, we create a model for DDoS detection in SDN using NSL-KDD dataset and then after training the model on this dataset, we use real DDoS attacks to assess our proposed model. Obtained results show that the proposed technique equates favorably to the current techniques with increased performance and accuracy.
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