From Static to Adaptive Defense: Federated Multi-Agent Deep Reinforcement Learning-Driven Moving Target Defense Against DoS Attacks in UAV Swarm Networks
Yuyang Zhou, Guang Cheng, Kang Du, Zihan Chen, Tian Qin, Yuyu Zhao

TL;DR
This paper introduces a federated multi-agent deep reinforcement learning framework for adaptive, proactive defense against DoS attacks in UAV swarm networks, significantly improving resilience and efficiency.
Contribution
It presents a novel FMADRL-based moving target defense framework with lightweight, coordinated MTD mechanisms tailored for UAV swarms under attack.
Findings
Up to 34.6% improvement in attack mitigation rate
Average recovery time reduced by up to 94.6%
Defense cost and energy consumption decreased significantly
Abstract
The proliferation of UAVs has enabled a wide range of mission-critical applications and is becoming a cornerstone of low-altitude networks, supporting smart cities, emergency response, and more. However, the open wireless environment, dynamic topology, and resource constraints of UAVs expose low-altitude networks to severe DoS threats. Traditional defense approaches, which rely on fixed configurations or centralized decision-making, cannot effectively respond to the rapidly changing conditions in UAV swarm environments. To address these challenges, we propose a novel federated multi-agent deep reinforcement learning (FMADRL)-driven moving target defense (MTD) framework for proactive DoS mitigation in low-altitude networks. Specifically, we design lightweight and coordinated MTD mechanisms, including leader switching, route mutation, and frequency hopping, to disrupt attacker efforts and…
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Taxonomy
TopicsUAV Applications and Optimization · Software-Defined Networks and 5G · Mobile Ad Hoc Networks
