首页 /研究 /EduSim-LLM: An Educational Platform Integrating Large Language Models and Robotic Simulation for Beginners
SWARM

EduSim-LLM: An Educational Platform Integrating Large Language Models and Robotic Simulation for Beginners

Shenqi Lu, Liangwei Zhang

发表年份
2026
访问权限
开放获取

摘要

In recent years, the rapid development of Large Language Models (LLMs) has significantly enhanced natural language understanding and human-computer interaction, creating new opportunities in the field of robotics. However, the integration of natural language understanding into robotic control is an important challenge in the rapid development of human-robot interaction and intelligent automation industries. This challenge hinders intuitive human control over complex robotic systems, limiting their educational and practical accessibility. To address this, we present the EduSim-LLM, an educational platform that integrates LLMs with robot simulation and constructs a language-drive control model that translates natural language instructions into executable robot behavior sequences in CoppeliaSim. We design two human-robot interaction models: direct control and autonomous control, conduct systematic simulations based on multiple language models, and evaluate multi-robot collaboration, motion planning, and manipulation capabilities. Experiential results show that LLMs can reliably convert natural language into structured robot actions; after applying prompt-engineering templates instruction-parsing accuracy improves significantly; as task complexity increases, overall accuracy rate exceeds 88.9% in the highest complexity tests.

关键词

cs.RO

相关论文

查看 SWARM 分类全部论文