학술논문

Adaptive local approximation neural network control based on extraordinariness particle swarm optimization for robotic manipulators
Document Type
Article
Source
Journal of Mechanical Science and Technology, 36(3), pp.1469-1483 Mar, 2022
Subject
기계공학
Language
English
ISSN
1976-3824
1738-494X
Abstract
In this paper, an adaptive radial basis function neural network (RBFNN) controller based on extraordinariness particle swarm optimization (EPSO) is proposed. To improve the trajectory tracking performance of robotic manipulators, the uncertainties of the manipulator dynamic equation are locally approximated using three RBFNNs with optimized hyperparameters. Besides, a robust control item is also considered in the controller to resist external disturbances. During hyperparameters optimization, the EPSO optimizer iteratively optimizes the hyperparameters of the RBFNN controller using the composite error of the system output. The stability of the control scheme is analyzed with the Lyapunov stability. Simulation results as well as the experimental verification prove the efficiency and applicability of the control scheme.