首页 /研究 /Neural Network Control for the Linear Motion of a Spherical Mobile Robot
LEARNING

Neural Network Control for the Linear Motion of a Spherical Mobile Robot

Yao Cai, Qiang Zhan, Xi Xi

发表年份
2011
引用次数
32
访问权限
开放获取

摘要

This paper discusses the stabilization and position tracking control of the linear motion of an underactuated spherical robot. Including the actuator dynamics, the complete dynamic model of the robot is deduced, which is a third order, two-variable nonlinear differential system that holds underactuation, strong coupling characteristics brought by the mechanism structure of the robot. Different from traditional treatments no linearization is applied, whereas a single-input multiple-output PID (SIMO_PID) controller is proposed with a neural network controller to compensate the actuator nonlinearity. A six-input single-output CMAC_GBF (Cerebellar Model Articulation Controller with General Basis Function) neural network is employed, while the Credit Assignment (CA) learning method is adopted to obtain faster convergence rate than the classical backpropagation (BP) learning method. The proposed controller can be generalizable to other single-input multiple-output system with good real-time capability. MATLAB simulations are used to validate the control effects.

关键词

Cerebellar model articulation controllerControl theory (sociology)Computer scienceController (irrigation)Artificial neural networkUnderactuationPID controllerBackpropagationNonlinear systemActuator

相关论文

查看 LEARNING 分类全部论文