RoboMoRe: LLM-based Robot Co-design via Joint Optimization of Morphology and Reward
By: Jiawei Fang , Yuxuan Sun , Chengtian Ma and more
Potential Business Impact:
Designs robots that move and look better.
Robot co-design, jointly optimizing morphology and control policy, remains a longstanding challenge in the robotics community, where many promising robots have been developed. However, a key limitation lies in its tendency to converge to sub-optimal designs due to the use of fixed reward functions, which fail to explore the diverse motion modes suitable for different morphologies. Here we propose RoboMoRe, a large language model (LLM)-driven framework that integrates morphology and reward shaping for co-optimization within the robot co-design loop. RoboMoRe performs a dual-stage optimization: in the coarse optimization stage, an LLM-based diversity reflection mechanism generates both diverse and high-quality morphology-reward pairs and efficiently explores their distribution. In the fine optimization stage, top candidates are iteratively refined through alternating LLM-guided reward and morphology gradient updates. RoboMoRe can optimize both efficient robot morphologies and their suited motion behaviors through reward shaping. Results demonstrate that without any task-specific prompting or predefined reward/morphology templates, RoboMoRe significantly outperforms human-engineered designs and competing methods across eight different tasks.
Similar Papers
Large Language Models as Natural Selector for Embodied Soft Robot Design
Robotics
Helps robots learn to design themselves.
Lang2Morph: Language-Driven Morphological Design of Robotic Hands
Robotics
Designs robot hands for any job using words.
Multi-Objective Reinforcement Learning for Large Language Model Optimization: Visionary Perspective
Computation and Language
Teaches AI to do many things well.