ROLGSYFeb 5, 2025

Learning Efficient Flocking Control based on Gibbs Random Fields

arXiv:2502.02984v11 citationsh-index: 9IEEE Robot Autom Lett
Originality Highly original
AI Analysis

This addresses the problem of scalable and safe flocking for multi-robot applications, representing an incremental improvement with novel method integration.

The paper tackled efficient flocking control for multi-robot systems in congested environments by developing a multi-agent reinforcement learning framework based on Gibbs Random Fields, achieving a success rate of around 99% in simulations and experiments.

Flocking control is essential for multi-robot systems in diverse applications, yet achieving efficient flocking in congested environments poses challenges regarding computation burdens, performance optimality, and motion safety. This paper addresses these challenges through a multi-agent reinforcement learning (MARL) framework built on Gibbs Random Fields (GRFs). With GRFs, a multi-robot system is represented by a set of random variables conforming to a joint probability distribution, thus offering a fresh perspective on flocking reward design. A decentralized training and execution mechanism, which enhances the scalability of MARL concerning robot quantity, is realized using a GRF-based credit assignment method. An action attention module is introduced to implicitly anticipate the motion intentions of neighboring robots, consequently mitigating potential non-stationarity issues in MARL. The proposed framework enables learning an efficient distributed control policy for multi-robot systems in challenging environments with success rate around $99\%$, as demonstrated through thorough comparisons with state-of-the-art solutions in simulations and experiments. Ablation studies are also performed to validate the efficiency of different framework modules.

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