Model-free Reinforcement Learning for Robust Locomotion using Demonstrations from Trajectory Optimization
Miroslav Bogdanovic, Majid Khadiv, Ludovic Righetti
- Year
- 2021
- Access
- Open access
Abstract
We present a general, two-stage reinforcement learning approach to create robust policies that can be deployed on real robots without any additional training using a single demonstration generated by trajectory optimization. The demonstration is used in the first stage as a starting point to facilitate initial exploration. In the second stage, the relevant task reward is optimized directly and a policy robust to environment uncertainties is computed. We demonstrate and examine in detail the performance and robustness of our approach on highly dynamic hopping and bounding tasks on a quadruped robot.
Keywords
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