Navigating the swarm: Deep neural networks command emergent behaviours
Dongjo Kim, Jeongsu Lee, Ho-Young Kim

TL;DR
This paper introduces a neural network-based method to design and control collective behaviors in multi-agent systems, enabling precise modulation of emergent patterns and transitions in swarm dynamics.
Contribution
It presents a novel approach using deep neural networks to discover and fine-tune interaction rules that produce desired collective behaviors in complex systems.
Findings
Able to modify swarm size and shape dynamically
Controlled timing of state transitions in collective motion
Generated hybrid and superimposed collective patterns
Abstract
Interacting individuals in complex systems often give rise to coherent motion exhibiting coordinated global structures. Such phenomena are ubiquitously observed in nature, from cell migration, bacterial swarms, animal and insect groups, and even human societies. Primary mechanisms responsible for the emergence of collective behavior have been extensively identified, including local alignments based on average or relative velocity, non-local pairwise repulsive-attractive interactions such as distance-based potentials, interplay between local and non-local interactions, and cognitive-based inhomogeneous interactions. However, discovering how to adapt these mechanisms to modulate emergent behaviours remains elusive. Here, we demonstrate that it is possible to generate coordinated structures in collective behavior at desired moments with intended global patterns by fine-tuning an…
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Taxonomy
TopicsReinforcement Learning in Robotics
