首页 /研究 /Humanoid Robot Gait Control Using PPO, SAC, and ES Algorithms
LOCOMOTION

Humanoid Robot Gait Control Using PPO, SAC, and ES Algorithms

Savarala Chethana, Sreevathsa Sree Charan, Vemula Srihitha, J. Amudha

发表年份
2023
引用次数
4

摘要

Gait control is the primary aspect in the case of humanoid robots as it directly has an influence on the stability and locomotion of the robot. This paper provides a comparative analysis of the three reinforcement learning algorithms namely Proximal Policy optimization (PPO), Soft-Actor Critic (SAC), and Evolutionary Strategies (ES) for the gait control in the humanoid robot. The main aim of the project is to study the effect of the behavior of the considered algorithms and make an inference on the behavior of the robot on fine-tuning the hyperparameters. The Brax environment, a simulation platform which is developed by Google and written in JAX is considered to evaluate the performance of the considered humanoid robot. Out of the considered algorithms, PPO gave the best reward of 11580.

关键词

Humanoid robotRobotGaitComputer scienceRobot controlStability (learning theory)Reinforcement learningArtificial intelligenceMobile robotSimulation

相关论文

查看 LOCOMOTION 分类全部论文