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Deep Reinforcement Learning based Swarm Motion for Collision Avoidance via Self-configurable Potential Formation

  • Marlon Soza
  • , Marco Herrera
  • , Oscar Camacho
  • , Juan Pablo Vásconez
  • , Roberto Andrade
  • , Alvaro Javier Prado-Romo
  • Universidad Católica del Norte
  • Universidad Andres Bello
  • Universidad San Francisco de Quito

Producción científica: Capítulo del libro/informe/acta de congresoContribución a la conferenciarevisión exhaustiva

Resumen

One of the main challenges in swarm robotics is modeling and controlling the collective dynamics arising from local interactions among many agents. Classical control methods struggle with the nonlinear, decentralized, and adaptive behaviors required for swarm coordination in dynamic environments. This work presents a Deep Reinforcement Learning (DRL)-based flocking control framework that enables emergent dynamics within an adjustable formation while ensuring collision avoidance. A Deep Deterministic Policy Gradient (DDPG) agent learns coordinated strategies directly from experience, avoiding explicit modeling of inter-agent dynamics. To represent a formation-adaptable model, a Potential Linked Nodes (PLN) structure modifies swarm kinematics to reach goals and avoid obstacles. The DRL-based model regulates swarm positioning via Artificial Potential Fields (APF), while the agent controls collective motion through linear and angular velocities. Experiments with different swarm sizes and environments assessed performance using flocking m etrics such as distance error and collisions, confirming s table transitions. Results validated that the DDPG agent achieves reliable flocking toward targets while avoiding obstacles.

Idioma originalInglés
Título de la publicación alojada2025 IEEE CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies, CHILECON 2025
EditoresGaston Lefranc, Claudio Cubillos
EditorialInstitute of Electrical and Electronics Engineers Inc.
ISBN (versión digital)9798350357363
DOI
EstadoPublicada - 2025
Evento2025 IEEE CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies, CHILECON 2025 - Valparaiso, Chile
Duración: 28 oct. 202530 oct. 2025

Serie de la publicación

NombreProceedings - IEEE CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies, ChileCon
ISSN (versión impresa)2832-1529
ISSN (versión digital)2832-1537

Conferencia

Conferencia2025 IEEE CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies, CHILECON 2025
País/TerritorioChile
CiudadValparaiso
Período28/10/2530/10/25

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