Lyapunov-Based Reinforcement Learning for Decentralized Multi-Agent Control
Qingrui Zhang, Hao Dong, Wei Pan

TL;DR
This paper introduces a Lyapunov-based multi-agent reinforcement learning algorithm called MASAC, which guarantees stability in decentralized control systems, demonstrated through a multi-agent navigation example.
Contribution
The paper proposes a novel MARL algorithm with stability guarantees using Lyapunov methods, addressing a key challenge in decentralized multi-agent control.
Findings
MASAC ensures closed-loop stability in multi-agent systems.
The algorithm outperforms existing methods in navigation tasks.
Stability constraints improve safety and reliability of learned policies.
Abstract
Decentralized multi-agent control has broad applications, ranging from multi-robot cooperation to distributed sensor networks. In decentralized multi-agent control, systems are complex with unknown or highly uncertain dynamics, where traditional model-based control methods can hardly be applied. Compared with model-based control in control theory, deep reinforcement learning (DRL) is promising to learn the controller/policy from data without the knowing system dynamics. However, to directly apply DRL to decentralized multi-agent control is challenging, as interactions among agents make the learning environment non-stationary. More importantly, the existing multi-agent reinforcement learning (MARL) algorithms cannot ensure the closed-loop stability of a multi-agent system from a control-theoretic perspective, so the learned control polices are highly possible to generate abnormal or…
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Taxonomy
TopicsReinforcement Learning in Robotics · Adaptive Dynamic Programming Control · Smart Grid Security and Resilience
