Paper ID: 2409.07846

Learning Skateboarding for Humanoid Robots through Massively Parallel Reinforcement Learning

William Thibault, Vidyasagar Rajendran, William Melek, Katja Mombaur

Learning-based methods have proven useful at generating complex motions for robots, including humanoids. Reinforcement learning (RL) has been used to learn locomotion policies, some of which leverage a periodic reward formulation. This work extends the periodic reward formulation of locomotion to skateboarding for the REEM-C robot. Brax/MJX is used to implement the RL problem to achieve fast training. Initial results in simulation are presented with hardware experiments in progress.

Submitted: Sep 12, 2024