2022
DOI: 10.1115/1.4055680
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Generating Human Arm Kinematics using Reinforcement Learning to Train Active Muscle Behavior in Automotive Research

Abstract: Computational Human Body Models (HBMs) are important tools for predicting human biomechanical response under automotive crash environments. In many scenarios, the prediction of the occupant response will be improved by incorporating active muscle control to into the HBMs to generate biofidelic kinematics during different vehicle maneuvers. In this study, we have proposed an approach to develop an active muscle controller based on reinforcement learning (RL). The RL Muscle Activation Control (RL-MAC) approach i… Show more

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