Dynamic Task Adaptation for Multi-Robot Manufacturing Systems with Large Language Models (2505.22804v1)
Abstract: Recent manufacturing systems are increasingly adopting multi-robot collaboration to handle complex and dynamic environments. While multi-agent architectures support decentralized coordination among robot agents, they often face challenges in enabling real-time adaptability for unexpected disruptions without predefined rules. Recent advances in LLMs offer new opportunities for context-aware decision-making to enable adaptive responses to unexpected changes. This paper presents an initial exploratory implementation of a LLM-enabled control framework for dynamic task reassignment in multi-robot manufacturing systems. A central controller agent leverages the LLM's ability to interpret structured robot configuration data and generate valid reassignments in response to robot failures. Experiments in a real-world setup demonstrate high task success rates in recovering from failures, highlighting the potential of this approach to improve adaptability in multi-robot manufacturing systems.
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