Sneak Attack against Mobile Robotic Networks under Formation Control
Yushan Li, Jianping He, Xuda Ding, Lin Cai, Xinping Guan

TL;DR
This paper reveals a novel attack method called 'sneak' that allows an external robot to learn and replace a target robot in mobile robotic networks under formation control, significantly threatening their cooperation.
Contribution
It introduces the 'sneak' attack, demonstrating how an attacker can learn interaction rules and effectively disrupt MRNs, which was previously unaddressed in security research.
Findings
The attack can successfully replace target robots in MRNs.
The learned interaction rules enable effective disruption.
Simulations confirm the attack's feasibility and impact.
Abstract
The security of mobile robotic networks (MRNs) has been an active research topic in recent years. This paper demonstrates that the observable interaction process of MRNs under formation control will present increasingly severe threats. Specifically, we find that an external attack robot, who has only partial observation over MRNs while not knowing the system dynamics or access, can learn the interaction rules from observations and utilize them to replace a target robot, destroying the cooperation performance of MRNs. We call this novel attack as sneak, which endows the attacker with the intelligence of learning knowledge and is hard to be tackled by traditional defense techniques. The key insight is to separately reveal the internal interaction structure within robots and the external interaction mechanism with the environment, from the coupled state evolution influenced by the…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Network Security and Intrusion Detection · Smart Grid Security and Resilience
