MHRC: Closed-loop Decentralized Multi-Heterogeneous Robot Collaboration with Large Language Models
Wenhao Yu, Jie Peng, Yueliang Ying, Sai Li, Jianmin Ji, Yanyong Zhang

TL;DR
This paper presents a decentralized framework using large language models to enable heterogeneous robots to collaborate effectively in complex tasks, enhancing multi-robot coordination and task execution.
Contribution
It introduces a novel LLM-based decentralized collaboration framework for heterogeneous robots, supporting flexible task sharing and communication among diverse robot types.
Findings
Framework improves task coordination efficiency
LLM prompts enhance planning accuracy
System effective across different room layouts
Abstract
The integration of large language models (LLMs) with robotics has significantly advanced robots' abilities in perception, cognition, and task planning. The use of natural language interfaces offers a unified approach for expressing the capability differences of heterogeneous robots, facilitating communication between them, and enabling seamless task allocation and collaboration. Currently, the utilization of LLMs to achieve decentralized multi-heterogeneous robot collaborative tasks remains an under-explored area of research. In this paper, we introduce a novel framework that utilizes LLMs to achieve decentralized collaboration among multiple heterogeneous robots. Our framework supports three robot categories, mobile robots, manipulation robots, and mobile manipulation robots, working together to complete tasks such as exploration, transportation, and organization. We developed a rich…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Robotics and Automated Systems
