计算机科学
平面图(考古学)
任务(项目管理)
机器人
过程(计算)
推论
人机交互
过程管理
人工智能
风险分析(工程)
系统工程
程序设计语言
工程类
医学
考古
历史
作者
Zejun Yang,Ning Li,Haitao Wang,Tianyu Jiang,Shaolin Zhang,Shaowei Cui,Hao Jiang,Chunpeng Li,Shuo Wang,Zhaoqi Wang
出处
期刊:IEEE robotics and automation letters
日期:2024-02-28
卷期号:9 (5): 4003-4010
标识
DOI:10.1109/lra.2024.3371223
摘要
To complete tasks in dynamic environments, robots need to timely update their plans to react to environment changes. Traditional stripe-like or learning-based planners struggle to achieve this due to their high reliance on meticulously predefined planning rules or labeled data. Fortunately, recent works find that Large Language Models (LLMs) can be effectively prompted to solve planning problems. Thus, we investigate the strategies for LLMs to master reactive planning problems without complex definitions and extra training. We propose Text2Reaction, an LLM-based framework enabling robots to continuously reason and update plans according to the latest environment changes. Inspired from human's step-by-step re-planning process, we present the Re-planning Prompt, which informs LLMs the basic principles of re-planning and fosters the gradual development of a current plan to a new one in a three-hop reasoning manner–cause analysis, consequence inference, and plan adjustment. In addition, Text2Reaction is designed to first generate an initial plan based on the task description before execution, allowing for subsequent iterative updates of this plan. We demonstrate the superior performance of Text2Reaction over prior works in reacting to various environment changes and completing varied tasks. In addition, we validate the reliability of our re-planning prompt through ablation experiments and its capability when deployed in real-world robots, enabling continuous reasoning in the face of diverse changes until the user instructions are successfully completed.
科研通智能强力驱动
Strongly Powered by AbleSci AI