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Reinforcement Learning-Based Parameter Optimization for Whole-Body Admittance Control with IS-MPC | IEEE Conference Publication | IEEE Xplore

Reinforcement Learning-Based Parameter Optimization for Whole-Body Admittance Control with IS-MPC


Abstract:

Maintaining stability in bipedal walking remains a significant challenge in humanoid robotics, largely due to the numerous involved hyperparameters. Traditional methods f...Show More

Abstract:

Maintaining stability in bipedal walking remains a significant challenge in humanoid robotics, largely due to the numerous involved hyperparameters. Traditional methods for determining these hyperparameters, such as heuristic approaches, can be both time-consuming and potentially suboptimal. In this paper, we present an approach aimed at enhancing the stability of bipedal gait, particularly when faced with floor perturbations and speed variations. Our main contribution is the integration of intrinsically stable model predictive control (IS-MPC) and whole-body admittance control within a closed-loop reinforcement learning system. We devised a reinforcement learning plugin, implemented in the mc_rtc framework, that allows the control system to continuously monitor the robot's current states, maintain recursive feasibility, and optimize parameters in real-time. Furthermore, we propose a reward function derived from a combination of changes in single and double support time, postural recovery, divergent control of motion, and action generation grounded in training optimization. In the course of this research, we conducted experiments on a real humanoid robot to validate initial aspects of our work. The integrated module's effectiveness was further assessed through comprehensive simulations.
Date of Conference: 08-11 January 2024
Date Added to IEEE Xplore: 09 February 2024
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Conference Location: Ha Long, Vietnam

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