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基于PID神经网络的非线性动态系统控制
引用本文:曹海云,李守巨,刘迎曦. 基于PID神经网络的非线性动态系统控制[J]. 控制工程, 2007, 14(Z1)
作者姓名:曹海云  李守巨  刘迎曦
作者单位:大连理工大学,工业装备结构分析国家重点实验室,辽宁,大连,116023
摘    要:基于PID神经网络的控制器可以完成变量的单输入-单输出非线性系统的任务.该控制器采用BP(误差反向传播)算法来修正连接权重值,通过在线训练和学习,使目标函数到达最优值.充分利用了BP神经网络算法逼近任意连续有界非线性函数的能力,显示了神经网络在解决非线性系统方面的潜能.为了达到控制的目的,和其他非线性建模技术相比较,PID神经网络有几个明确的优点和它独特的用法相一致.仿真结果表明,在对非线性动态系统控制时,基于PID神经网络的控制系统具有很强的灵活和高效性,能取得良好的控制效果.

关 键 词:非线性系统控制  PID神经网络  非线性最优化  BP算法  神经网络  非线性  动态  系统控制  Neural Networks  Control  Dynamic System  控制效果  高效性  控制系统  仿真结果  比较  建模技术  潜能  显示  能力  线性函数  连续  逼近  网络算法

Nonlinear Dynamic System Control with PID Neural Networks
CAO Hai-yun,LI Shou-ju,LIU Ying-xi. Nonlinear Dynamic System Control with PID Neural Networks[J]. Control Engineering of China, 2007, 14(Z1)
Authors:CAO Hai-yun  LI Shou-ju  LIU Ying-xi
Abstract:An neural network-based controller is designed and analyzed for a class of single-input nonlinear system.In order to optimize the ob- ject function through training on-line and learning,neural network's weights are adjusted by BP(Error Back Propagation)algorithm.The con- troller makes the best of BP neural network algorithm's ability of approaching all continuous,nonlinear functions,which shows the potential of neural network in solving the nonlinear system.Compared with other nonlinear modehng techniques for control purposes,it has several specific advantages that make it suited to particular applications.The simulation results show that the proposed control system with PID neural network is flexible and efficient,and it can fetch the favorable control results.
Keywords:nonlinear system eontrol  PID neural network  nonlinear optimization  BP algorithm
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