计算机科学
强化学习
入侵检测系统
服务拒绝攻击
计算机网络
带宽(计算)
洪水(心理学)
分布式计算
抖动
网络数据包
实时计算
人工智能
互联网
电信
万维网
心理治疗师
心理学
作者
Delali Kwasi Dake,James Dzisi Gadze,Griffith Selorm Klogo
标识
DOI:10.1109/iccma53594.2021.00011
摘要
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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