Multi-Robot Path Planning Combining Heuristics and Multi-Agent Reinforcement Learning
Shaoming Peng

TL;DR
This paper introduces MAPPOHR, a multi-robot path planning approach that combines heuristic search, empirical rules, and multi-agent reinforcement learning to improve efficiency and conflict avoidance in dynamic environments.
Contribution
The paper presents a novel two-layer path planning method that integrates heuristic search with multi-agent reinforcement learning, enhancing planning performance and learning efficiency.
Findings
MAPPOHR outperforms existing methods in conflict scenarios.
The approach achieves higher learning efficiency through empirical knowledge integration.
Experimental results demonstrate improved path planning performance.
Abstract
Multi-robot path finding in dynamic environments is a highly challenging classic problem. In the movement process, robots need to avoid collisions with other moving robots while minimizing their travel distance. Previous methods for this problem either continuously replan paths using heuristic search methods to avoid conflicts or choose appropriate collision avoidance strategies based on learning approaches. The former may result in long travel distances due to frequent replanning, while the latter may have low learning efficiency due to low sample exploration and utilization, and causing high training costs for the model. To address these issues, we propose a path planning method, MAPPOHR, which combines heuristic search, empirical rules, and multi-agent reinforcement learning. The method consists of two layers: a real-time planner based on the multi-agent reinforcement learning…
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Taxonomy
TopicsRobotic Path Planning Algorithms
MethodsEmirates Airlines Office in Dubai
