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Gait Optimization Method for Humanoid Robots Based on Parallel Comprehensive Learning Particle Swarm Optimizer Algorithm

Chongben Tao, Jie Xue, Zufeng Zhang, Feng Cao, Chunguang Li, Hanwen Gao

2021Frontiers in Neurorobotics18 citationsDOIOpen Access PDF

Abstract

To improve the fast and stable walking ability of a humanoid robot, this paper proposes a gait optimization method based on a parallel comprehensive learning particle swarm optimizer (PCLPSO). Firstly, the key parameters affecting the walking gait of the humanoid robot are selected based on the natural zero-moment point trajectory planning method. Secondly, by changing the slave group structure of the PCLPSO algorithm, the gait training task is decomposed, and a parallel distributed multi-robot gait training environment based on RoboCup3D is built to automatically optimize the speed and stability of bipedal robot walking. Finally, a layered learning approach is used to optimize the turning ability of the humanoid robot. The experimental results show that the PCLPSO algorithm achieves a quickly optimal solution, and the humanoid robot optimized possesses a fast and steady gait and flexible steering ability.

Topics & Concepts

Humanoid robotZero moment pointComputer scienceParticle swarm optimizationGaitRobotTrajectoryStability (learning theory)Artificial intelligenceSimulationAlgorithmMachine learningPhysicsPhysiologyAstronomyBiologyRobotic Locomotion and ControlProsthetics and Rehabilitation RoboticsRobotic Mechanisms and Dynamics
Gait Optimization Method for Humanoid Robots Based on Parallel Comprehensive Learning Particle Swarm Optimizer Algorithm | Litcius