2023
DOI: 10.1101/2023.12.19.572447
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Reinforcement Learning for Control of Human Locomotion in Simulation

Andrii Dashkovets,
Brokoslaw Laschowski

Abstract: Control of robotic leg prostheses and exoskeletons is an open challenge. Computer modeling and simulation can be used to study the dynamics and control of human walking and extract principles that can be programmed into robotic legs to behave similar to biological legs. In this study, we present the development of an efficient two-layer Q-learning algorithm, with k-d trees, that operates over continuous action spaces and a reward model that estimates the degree of muscle activation similarity between the agent… Show more

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