多机器人任务规划方法综述

A Survey of Multi-Robot Task Planning Methods

  • 摘要: 机器人任务规划作为连接高层语义决策与底层运动控制的关键环节,赋予了机器人系统在长时域、高复杂度场景下的自主作业能力。然而,随着任务需求向着非结构化、动态化及大规模化方向演进,受限于物理载荷及计算资源,单体机器人往往难以独立应对复杂的作业挑战。相比之下,多机器人系统凭借协同作业、异构资源互补及并发执行的优势,能够通过分工协作将复杂任务解耦,显著提高机器人集群的作业效率、系统鲁棒性及环境适应能力,已成为当前任务规划研究的核心对象。本文系统回顾了多机器人任务规划的研究进展,围绕任务分解、任务分配以及任务规划等核心步骤,对多机器人任务规划的方法建模与优化求解展开了全面分析。此外,本文还探讨了大语言模型与传统符号规划/优化算法的融合范式,分析了其在语义理解与逻辑推理上的互补优势。最后,论文展望了该领域未来的研究方向与趋势。

     

    Abstract: Robot task planning bridges high-level decision-making and low-level control, enabling autonomy in long-horizon scenarios. However, as environments become increasingly unstructured and dynamic, resource-constrained single robots struggle to meet complex demands. In contrast, multi-robot systems leverage collaborative operation, heterogeneous resources, and concurrent execution to decouple tasks, significantly enhancing efficiency, robustness, and adaptability. This paper systematically reviews multi-robot task planning research, analyzing modeling and optimization methods for task decomposition, allocation, and planning. Furthermore, it explores integration paradigms combining Large Language Models (LLMs) with traditional symbolic algorithms, synthesizing strengths in semantic understanding and logical reasoning. Finally, the paper outlines future research directions for this evolving field.

     

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