Resilient Autonomous Control of Distributed Multi-agent Systems in Contested Environments
Rohollah Moghadam, Hamidreza Modares

TL;DR
This paper introduces a resilient, learning-based control framework for multi-agent systems that can adapt to uncertainties and cyber-physical attacks, ensuring robust synchronization and mission continuity.
Contribution
It develops a novel distributed control protocol combining H_infinity control, reinforcement learning, and trust mechanisms to enhance resilience against cyber-physical threats in multi-agent systems.
Findings
Effective attack mitigation demonstrated in simulations
Robust synchronization achieved despite uncertainties
Trust-based data filtering improves resilience
Abstract
An autonomous and resilient controller is proposed for leader-follower multi-agent systems under uncertainties and cyber-physical attacks. The leader is assumed non-autonomous with a nonzero control input, which allows changing the team behavior or mission in response to environmental changes. A resilient learning-based control protocol is presented to find optimal solutions to the synchronization problem in the presence of attacks and system dynamic uncertainties. An observer-based distributed H_infinity controller is first designed to prevent propagating the effects of attacks on sensors and actuators throughout the network, as well as to attenuate the effect of these attacks on the compromised agent itself. Non-homogeneous game algebraic Riccati equations are derived to solve the H_infinity optimal synchronization problem and off-policy reinforcement learning is utilized to learn…
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