基于大语言模型的多机器人系统综述

Survey of Multi-robot Systems Based on Large Language Model

  • 摘要: 随着人工智能技术的迅猛发展,多机器人系统在任务执行效率、环境适应性和鲁棒性等方面展现出显著优势。然而,传统多机器人系统面临通信协调、实时决策和复杂任务分解等挑战。近年来,大语言模型(LLM)的爆发式进步为多机器人系统的智能化提供了新范式,其强大的自然语言理解、逻辑推理和泛化能力可实现高效的任务规划、人机交互和机器人间协作。本文系统地综述了基于LLM的多机器人系统研究进展,梳理了当前的主流基准,并分析了目前基于LLM的多机器人系统所遇到的核心挑战。

     

    Abstract: With the rapid development of artificial intelligence technology, multi-robot systems have shown significant advantages in task execution efficiency, environmental adaptability and robustness. However, traditional multi-robot systems face challenges such as communication coordination, real-time decision-making and complex task decomposition. In recent years, the explosive progress of large language model (LLM) provides a new paradigm for the intelligentization of multi-robot systems, enabling efficient task planning, human-robot interaction, and inter-robot collaboration through its powerful natural language understanding, logical reasoning and generalization capabilities. We systematically review the research progress of LLM-based multi-robot systems, sort out the current mainstream benchmarks, and analyze the core challenges encountered by LLM-based multi-robot systems.

     

/

返回文章
返回