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Deep Reinforcement Learning of group consciousness for multi-robot pathfinding
Resource type
Journal Article
Authors/contributors
- Huo, Lin (Author)
- Mao, Jianlin (Author)
- San, Hongjun (Author)
- Li, Ruiqi (Author)
- Zhang, Shufan (Author)
Title
Deep Reinforcement Learning of group consciousness for multi-robot pathfinding
Abstract
Deep Reinforcement Learning (DRL) is highly effective in tackling complex environments through individual decision-making. It offers a novel and powerful approach to multi-robot pathfinding (MRPF). Building on DRL principles, this paper proposes a two-layer collaborative planning framework based on group consciousness (MACCRPF). The framework addresses the unique challenges of MRPF, where robots must not only independently complete their tasks but also coordinate to avoid conflicts during execution. Specifically, the proposed two-layer group consciousness mechanism encompasses: Basic layer group consensus, which emphasizes real-time information sharing and local task scheduling among robots. This layer ensures individual decisions are optimized through dynamic interaction and coordination. Top-layer group consensus, guided by the basic layer consensus, incorporates group strategies and evaluation mechanisms to adaptively adjust pathfinding in complex environments. Additionally, a hierarchical reward mechanism is designed to balance the demands of the two-layer planning framework. This mechanism significantly enhances inter-robot coordination efficiency and task completion rates. Experimental results demonstrate the efficacy of our approach, achieving over 20% improvement in pathfinding success rates compared to state-of-the-art methods. Furthermore, the framework exhibits strong transferability and generalization, maintaining high efficiency across diverse environments. This method provides a technical pathway for efficient collaboration in multi-robot systems.
Publication
Engineering Applications of Artificial Intelligence
Date
2025-09-01
Volume
155
Pages
110978
Journal Abbr
Engineering Applications of Artificial Intelligence
Accessed
8/25/25, 9:37 AM
ISSN
0952-1976
Library Catalog
ScienceDirect
Citation
Huo, L., Mao, J., San, H., Li, R., & Zhang, S. (2025). Deep Reinforcement Learning of group consciousness for multi-robot pathfinding. Engineering Applications of Artificial Intelligence, 155, 110978. https://doi.org/10.1016/j.engappai.2025.110978
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