Author
Listed:
- Shuzhen Luo
(North Carolina State University
Embry-Riddle Aeronautical University)
- Menghan Jiang
(North Carolina State University)
- Sainan Zhang
(North Carolina State University)
- Junxi Zhu
(North Carolina State University)
- Shuangyue Yu
(North Carolina State University)
- Israel Dominguez Silva
(North Carolina State University)
- Tian Wang
(North Carolina State University)
- Elliott Rouse
(University of Michigan)
- Bolei Zhou
(University of California)
- Hyunwoo Yuk
(Korea Advanced Institute of Science and Technology)
- Xianlian Zhou
(New Jersey Institute of Technology)
- Hao Su
(North Carolina State University
University of North Carolina at Chapel Hill)
Abstract
Exoskeletons have enormous potential to improve human locomotive performance1–3. However, their development and broad dissemination are limited by the requirement for lengthy human tests and handcrafted control laws2. Here we show an experiment-free method to learn a versatile control policy in simulation. Our learning-in-simulation framework leverages dynamics-aware musculoskeletal and exoskeleton models and data-driven reinforcement learning to bridge the gap between simulation and reality without human experiments. The learned controller is deployed on a custom hip exoskeleton that automatically generates assistance across different activities with reduced metabolic rates by 24.3%, 13.1% and 15.4% for walking, running and stair climbing, respectively. Our framework may offer a generalizable and scalable strategy for the rapid development and widespread adoption of a variety of assistive robots for both able-bodied and mobility-impaired individuals.
Suggested Citation
Shuzhen Luo & Menghan Jiang & Sainan Zhang & Junxi Zhu & Shuangyue Yu & Israel Dominguez Silva & Tian Wang & Elliott Rouse & Bolei Zhou & Hyunwoo Yuk & Xianlian Zhou & Hao Su, 2024.
"Experiment-free exoskeleton assistance via learning in simulation,"
Nature, Nature, vol. 630(8016), pages 353-359, June.
Handle:
RePEc:nat:nature:v:630:y:2024:i:8016:d:10.1038_s41586-024-07382-4
DOI: 10.1038/s41586-024-07382-4
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