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基于可生长结构的神经网络建模与仿真
引用本文:孙亮,谢艳辉. 基于可生长结构的神经网络建模与仿真[J]. 控制工程, 2007, 14(5): 485-487
作者姓名:孙亮  谢艳辉
作者单位:北京工业大学,电子信息与控制工程学院,北京,100022;北京工业大学,电子信息与控制工程学院,北京,100022
基金项目:国家自然科学基金 , 高等学校博士学科点专项科研项目
摘    要:构建了用于倒立摆平衡控制的神经网络学习模型。该模型利用可生长结构神经网络的优势,不需要预先规定网络的结构和规模,便可以在学习过程中根据需要生长。基于可生长结构的神经网络将监督与无监督学习结合,能够快速学习刺激与响应之间的潜在关系。该神经网络离线进行监督学习,训练后作为控制器作用于倒立摆系统,构成基于可生长结构的倒立摆控制模型。以Matlab为开发工具进行了仿真实验。仿真结果表明,该模型能够完成一级倒立摆平衡控制任务,并验证了其有效性和抗干扰能力:

关 键 词:生长网络  倒立摆  自组织  监督学习
文章编号:1671-7848(2007)04-0485-03
修稿时间:2006-06-09

Modeling and Simulation of Neural Network Based on Growing Structure
SUN Liang,XIE Yan-hui. Modeling and Simulation of Neural Network Based on Growing Structure[J]. Control Engineering of China, 2007, 14(5): 485-487
Authors:SUN Liang  XIE Yan-hui
Abstract:A control model for balance of inverted pendulum is designed based on neural network.Taking advantage of growing network,the model can grow rapidly during learning process,without predefining structure and size of neural network.Growing network combines supervised learning with unsupervised learning and gains underlying relation between stimulus and response.After supervised learning off line,trained neural network as a controller is applied to inverted pendulum system to form control model based on growing network.Simulation results in Matlab show that the model can accomplish single inverted pendulum balancing task,and has the anti-disturbance ability.
Keywords:growing network  inverted pendulum  self-organizing  supervised learning
本文献已被 CNKI 维普 万方数据 等数据库收录!
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