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Conflict Area Prediction for Boosting Search-Based Multi-Agent Pathfinding Algorithms

Jaesung Ryu, Youngjoon Kwon, Sangho Yoon, Kyungjae Lee

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Abstract

We address the challenge of efficiently controlling multi-agent systems, crucial in fields like logistics and traffic management. We propose a novel approach that combines learning-based techniques with search-based methods, focusing on enhancing the conflict-based search (CBS). The CBS ensures optimality but suffers from increasing complexity as agents or maps grow. To tackle this, we leverage learning-based approaches to enhance computational efficiency. By training a conflict area prediction (CAP) network, we anticipate po- tential conflict areas, allowing for low-level path planners to explore conflict-free paths. Our experiments demonstrate the effectiveness of our method in reducing computational demands compared to existing approaches.

Index terms

Path Planning for Multiple Mobile Robots or Agents Integrated Planning and Learning Multi-Robot Systems