Leveraging Adaptive Group Negotiation for Heterogeneous Multi-Robot Collaboration with Large Language Models
Siqi Song, Xuanbing Xie, Zonglin Li, Yuqiang Li, Shijie Wang, Biqing Qi

TL;DR
This paper introduces CLiMRS, a novel framework using adaptive group negotiation among large language models to improve heterogeneous multi-robot collaboration, demonstrating significant efficiency gains in complex assembly tasks.
Contribution
The paper presents a new adaptive group negotiation framework with dynamic subgroup formation and multi-LLM discussions for enhanced multi-robot collaboration.
Findings
Achieved over 40% higher efficiency on complex tasks.
Surpassed baseline performance in heterogeneous multi-robot assembly.
Demonstrated robustness and adaptability in uncertain environments.
Abstract
Multi-robot collaboration tasks often require heterogeneous robots to work together over long horizons under spatial constraints and environmental uncertainties. Although Large Language Models (LLMs) excel at reasoning and planning, their potential for coordinated control has not been fully explored. Inspired by human teamwork, we present CLiMRS (Cooperative Large-Language-Model-Driven Heterogeneous Multi-Robot System), an adaptive group negotiation framework among LLMs for multi-robot collaboration. This framework pairs each robot with an LLM agent and dynamically forms subgroups through a general proposal planner. Within each subgroup, a subgroup manager leads perception-driven multi-LLM discussions to get commands for actions. Feedback is provided by both robot execution outcomes and environment changes. This grouping-planning-execution-feedback loop enables efficient planning and…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Social Robot Interaction and HRI · Robotic Path Planning Algorithms
