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基于RBF网络非线性系统逆控制的一种设计方案
引用本文:张绍德,李坤,张世峰.基于RBF网络非线性系统逆控制的一种设计方案[J].系统仿真学报,2006,18(9):2688-2690.
作者姓名:张绍德  李坤  张世峰
作者单位:安徽工业大学电气信息学院,马鞍山,243002
基金项目:安徽省科技攻关项目;安徽省教育厅自然科学基金
摘    要:基于逆动力学控制的思想,提出一种RBF神经网络逆控制与PID控制相结合的在线自学习控制方案。辨识器采用RBF神经网络结构和最近邻聚类算法,实现了对系统逆动力学模型的动态辨识。并将辨识模型作为控制器模型,与被控对象串联,构成一个动态伪线性对象,从而使非线性对象的控制问题转换为线性对象的控制问题。仿真实验证明该控制策略不仅能使系统具有良好的动态跟踪性能和抗干扰能力,而且具有较强的鲁棒性。

关 键 词:RBF神经网络  直接逆控制  在线自学习  最近邻聚类算法
文章编号:1004-731X(2006)09-2688-03
收稿时间:2005-07-09
修稿时间:2005-12-15

Design of Inverse Control of Nonlinear System Based on RBF Neural Network
ZHANG Shao-de,LI Kun,ZHANG Shi-feng.Design of Inverse Control of Nonlinear System Based on RBF Neural Network[J].Journal of System Simulation,2006,18(9):2688-2690.
Authors:ZHANG Shao-de  LI Kun  ZHANG Shi-feng
Abstract:Based on the though t of inverse system control, a method of on-line self-learning control strategy was proposed, which combines inverse control based on RBF neural network with PID control. The system identifier based on RBF neural network which applies nearest neighbor clustering algorithm realizes the identification of the inverse dynamic system model. The model of controller which is the copy of identifier and the plant controlled are in series, which forms a dynamic pseudo linear system. Consequently, the control problem of non-linear plant is converted into that of linear plant. With the help of simulations, the control strategy based on RBFNN inverse controller can not only improve dynamic track performance and resistance to disturbance of system, but also possess excellent robustness.
Keywords:RBF neural network  direct inverse control  on-line self-learning  nearest neighbor clustering algorithm
本文献已被 CNKI 维普 万方数据 等数据库收录!
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