EmbodiedAgent: A Scalable Hierarchical Approach to Overcome Practical Challenge in Multi-Robot Control
EmbodiedAgent: A Scalable Hierarchical Approach to Overcome Practical Challenge in Multi-Robot Control
This paper introduces EmbodiedAgent, a hierarchical framework for heterogeneous multi-robot control. EmbodiedAgent addresses critical limitations of hallucination in impractical tasks. Our approach integrates a next-action prediction paradigm with a structured memory system to decompose tasks into executable robot skills while dynamically validating actions against environmental constraints. We present MultiPlan+, a dataset of more than 18,000 annotated planning instances spanning 100 scenarios, including a subset of impractical cases to mitigate hallucination. To evaluate performance, we propose the Robot Planning Assessment Schema (RPAS), combining automated metrics with LLM-aided expert grading. Experiments demonstrate EmbodiedAgent's superiority over state-of-the-art models, achieving 71.85% RPAS score. Real-world validation in an office service task highlights its ability to coordinate heterogeneous robots for long-horizon objectives.
Hanwen Wan、Yifei Chen、Zeyu Wei、Dongrui Li、Zexin Lin、Donghao Wu、Jiu Cheng、Yuxiang Zhang、Xiaoqiang Ji
自动化技术、自动化技术设备计算技术、计算机技术
Hanwen Wan,Yifei Chen,Zeyu Wei,Dongrui Li,Zexin Lin,Donghao Wu,Jiu Cheng,Yuxiang Zhang,Xiaoqiang Ji.EmbodiedAgent: A Scalable Hierarchical Approach to Overcome Practical Challenge in Multi-Robot Control[EB/OL].(2025-04-14)[2025-05-11].https://arxiv.org/abs/2504.10030.点此复制
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