Home /Research /LEMURS: Learning Distributed Multi-Robot Interactions
SWARM

LEMURS: Learning Distributed Multi-Robot Interactions

Eduardo Sebastián, Thai Duong, Nikolay Atanasov, Eduardo Montijano, Carlos Sagüés

Year
2023
Citations
8

Abstract

This paper presents LEMURS, an algorithm for learning scalable multi-robot control policies from cooperative task demonstrations. We propose a port-Hamiltonian description of the multi-robot system to exploit universal physical constraints in interconnected systems and achieve closed-loop stability. We represent a multi-robot control policy using an architecture that combines self-attention mechanisms and neural ordinary differential equations. The former handles time-varying communication in the robot team, while the latter respects the continuous-time robot dynamics. Our representation is distributed by construction, enabling the learned control policies to be deployed in robot teams of different sizes. We demonstrate that LEMURS can learn interactions and cooperative behaviors from demonstrations of multi-agent navigation and flocking tasks.

Keywords

RobotComputer scienceExploitScalabilityFlocking (texture)LemurRobot controlRobot kinematicsArtificial intelligenceReinforcement learning

Related papers

Browse all SWARM papers