Learning to flock in open space by avoiding collisions and staying together
By: Martino Brambati , Antonio Celani , Marco Gherardi and more
Potential Business Impact:
Teaches robots to move together like birds.
We investigate the emergence of cohesive flocking in open, boundless space using a multi-agent reinforcement learning framework. Agents integrate positional and orientational information from their closest topological neighbours and learn to balance alignment and attractive interactions by optimizing a local cost function that penalizes both excessive separation and close-range crowding. The resulting Vicsek-like dynamics is robust to algorithmic implementation details and yields cohesive collective motion with high polar order. The optimal policy is dominated by strong aligning interactions when agents are sufficiently close to their neighbours, and a flexible combination of alignment and attraction at larger separations. We further characterize the internal structure and dynamics of the resulting groups using liquid-state metrics and neighbour exchange rates, finding qualitative agreement with empirical observations in starling flocks. These results suggest that flocking may emerge in groups of moving agents as an adaptive response to the biological imperatives of staying together while avoiding collisions.
Similar Papers
Position-Based Flocking for Robust Alignment
Multiagent Systems
Makes robots move together like a flock.
What the flock knows that the birds do not: exploring the emergence of joint agency in multi-agent active inference
Adaptation and Self-Organizing Systems
Flocks learn and act together, better than one.
Position-Based Flocking for Robust Alignment
Multiagent Systems
Makes robots move together like a flock.