IoT Network Attack Detection and Mitigation
Erol Gelenbe, Piotr Fröhlich, Mateusz Nowak, Stavros Papadopoulos, Aikaterini Protogerou, Anastasios Drosou, Dimitrios Tzovaras
Abstract
Cyberattacks on the Internet of Things (IoT) can cause major economic and physical damage, and disrupt production lines, manufacturing processes, supply chains, impact the physical safety of vehicles, and damage the health of human beings. Thus we describe and evaluate a distributed and robust attack detection and mitigation system for network environments where communicating decision agents use Graph Neural Networks to provide attack alerts. We also present an attack mitigation system that uses a Reinforcement Learning driven Software Defined Network to process the alerts generated by the attack detection sysem, together with Quality of Service measurements, so as to re-route sensitive traffic away from compromised network paths using. Experimental results illustrate both the detection and re-routing scheme.