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  5. LLM-based generalizable hierarchical task planning and execution for heterogeneous robot teams with event-driven replanning
 
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LLM-based generalizable hierarchical task planning and execution for heterogeneous robot teams with event-driven replanning

Source
arXiv
Date Issued
2025-11
Author(s)
Borate, Suraj S.
B., Bhavish Rai
Pardeshi, Vipul
Dr Madhu Vadali  
Indian Institute of Technology, Gandhinagar
DOI
10.48550/arXiv.2511.22354
Abstract
This paper introduces CoMuRoS (Collaborative Multi-Robot System), a generalizable hierarchical architecture for heterogeneous robot teams that unifies centralized deliberation with decentralized execution, and supports event-driven replanning. A Task Manager LLM interprets natural-language goals, classifies tasks, and allocates subtasks using static rules plus dynamic contexts (task, history, robot and task status, and events).Each robot runs a local LLM that composes executable Python code from primitive skills (ROS2 nodes, policies), while onboard perception (VLMs/image processing) continuously monitors events and classifies them into relevant or irrelevant to the task. Task failures or user intent changes trigger replanning, allowing robots to assist teammates, resume tasks, or request human help. Hardware studies demonstrate autonomous recovery from disruptive events, filtering of irrelevant distractions, and tightly coordinated transport with emergent human-robot cooperation (e.g., multirobot collaborative object recovery success rate: 9/10, coordinated transport: 8/8, human-assisted recovery: 5/5).Simulation studies show intention-aware replanning. A curated textual benchmark spanning 22 scenarios (3 tasks each, around 20 robots) evaluates task allocation, classification, IoU, executability, and correctness, with high average scores (e.g., correctness up to 0.91) across multiple LLMs, a separate replanning set (5 scenarios) achieves 1.0 correctness. Compared with prior LLM-based systems, CoMuRoS uniquely demonstrates runtime, event-driven replanning on physical robots, delivering robust, flexible multi-robot and human-robot collaboration.
URI
http://repository.iitgn.ac.in/handle/IITG2025/33633
Subjects
Multi-robot systems
Hierarchical task planning
Event-driven replanning
LLM
Human�robot collaboration
Generalization
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