Adaptive attack mitigation for IoV Flood Attacks

Author Gelenbe E.; Nasereddin M.
Title Adaptive attack mitigation for IoV Flood Attacks
Journal IEEE Internet of Things Journal
Year 2025
Status Published
Volume 12
Issue 5
DOI 10.1109/JIOT.2025.3529615
URL https://drive.google.com/file/d/1UPsgRyMDKUv4sT6oiOQQXxDgQ8bFTXQM/view
Abstract <p>Gateway Servers for the Internet of Vehicles (IoV)&nbsp;must meet stringent Security and Quality of Service (QoS)&nbsp;requirements, including cyberattack protection, low delays and&nbsp;minimal packet loss, to offer secure real-time data exchange for&nbsp;human and vehicle safety and efficient road traffic management.&nbsp;Therefore, it is vital to protect these systems from cyberattacks&nbsp;with adequate Attack Detection (AD) and Mitigation mechanisms. Such attacks often include packet Floods that impair&nbsp;the QoS of the networks and Gateways and even impede the&nbsp;Gateways’ capability to carry out AD. Thus, this paper first&nbsp;evaluates these effects using system measurements during Flood&nbsp;attacks. It then demonstrates how a Smart Quasi-Deterministic&nbsp;Policy Forwarder (SQF) at the entrance of the Gateway can&nbsp;regulate the incoming traffic to ensure that the Gateway supports<br />
the AD to operate promptly during an attack. Since Flood attacks&nbsp;create substantial packet backlogs, we propose a novel Adaptive&nbsp;Attack Mitigation (AAM) system that is activated after an attack&nbsp;is detected to dynamically sample the incoming packet stream,&nbsp;determine whether the attack is continuing, and also drop batches&nbsp;of packets at the input to reduce the effects of the attack. The&nbsp;AAM is designed to minimize a cost function that includes the&nbsp;sampling overhead and the cost of lost benign packets. We show&nbsp;experimentally that the Optimum AAM approach is effective&nbsp;in mitigating attacks and present theoretical and experimental&nbsp;results that validate the proposed approach.</p>
PDF OptimumAAM-M.pdf