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DDoS and Flash Event Detection in Higher Bandwidth SDN-IoT using Multiagent Reinforcement Learning

Prof. Dake, Delali Kwasi
Associate Professor
  +233(0)540504108
  dkdake@uew.edu.gh

Authors
Dake, D. K., Gadze, J. D., & Klogo, G. S.
Publication Year
2021
Article Title
DDoS and Flash Event Detection in Higher Bandwidth SDN-IoT using Multiagent Reinforcement Learning
Conference Title
International Conference on Computing, Computational Modelling and Applications (ICCMA)
Place
Brest, France
Abstract

The emergence of 5G, IoT, Big Data, and related technologies have necessitated a shift to SDN architectural design and DRL algorithms for network task automation. Without prompt intelligent detection, the volumetric UDP flooding attack from zombies in an SDN-IoT network tends to consume network resources and mix with flash crowd events from legitimate hosts. This paper proposes a multiagent reinforcement learning framework in SDN-IoT to detect and mitigate DDoS attacks and route flash crowd events in the network effectively without compromising benign traffic. We simulated a 200 nodes topology with higher bandwidth and transmission rate in Mininet and implemented a multiagent deep deterministic policy gradient (MADDPG) algorithm for the framework. From the simulation results, the proposed approach outperforms Deep Deterministic Policy Gradient (DDPG) algorithm for the following network metrics: delay; jitter; packet loss; intrusion detection; and bandwidth utilization of network flows

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