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Distributed Safe Navigation of Multi-Agent Systems using Control Barrier Function-Based Optimal Controllers

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This paper proposes a distributed controller synthesis framework for safe navigation of multi-agent systems. We leverage control barrier functions to formulate collision avoidance with obstacles and teammates as constraints on the control input for a state-dependent network optimization problem that encodes team formation and the navigation task. Our algorithmic solution is valid for general nonlinear control dynamics and optimization problems. The resulting controller is distributed, satisfies the safety constraints at all times, and is asymptotically optimal. We illustrate its performance in a team of differential-drive robots in a variety of complex environments, both in simulation and in hardware.

Pol Mestres, Carlos Nieto-Granda, Jorge Cort\'es• 2024

Related benchmarks

TaskDatasetResultRank
Collision AvoidanceCircle-swap Obstacle Density (test)
Success Rate82
32
Drone Collision AvoidanceCircle-swap v=0.75 v1.0 (test)
Success Rate (SR)91.3
8
Drone Collision AvoidanceCircle-swap 3.0 v1.0 (test)
Success Rate (SR)73.3
8
Swarm Collision Avoidancecircle-swap N=128 1.0
Success Rate (%)78.1
8
Swarm Collision Avoidancecircle-swap N=256 1.0
Success Rate78.6
8
Swarm Collision Avoidancecircle-swap N=512 1.0
Success Rate (SR)84.4
8
Drone Collision AvoidanceCircle-swap v1.5 v1.0 (test)
Success Rate79.4
8
Drone Collision AvoidanceCircle-swap v=2.25 v1.0 (test)
Success Rate75.8
8
Swarm Collision Avoidancecircle-swap N=64 1.0
Success Rate (SR)82.8
8
Multi-arm cooperative formation controlMuJoCo Four-arm Simulation
Time per step (ms)3.32
4
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