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基于结构的神经网络在液压缓冲器建模中的应用
引用本文:杨海威,詹永麒,乔俊伟,施光林.基于结构的神经网络在液压缓冲器建模中的应用[J].上海交通大学学报,2003,37(5):741-744.
作者姓名:杨海威  詹永麒  乔俊伟  施光林
作者单位:上海交通大学机械与动力工程学院,上海,200030
摘    要:分析了液压缓冲器的结构及其动态工作过程,介绍了基于结构的神经网络建模方法.该建模方法根据系统结构组成特点将复杂系统分解为相互关联的简单子系统,用函数链神经元分别建立子系统模型,然后根据子系统间固有的连接关系将子系统神经元模型连接成一个网络,所得网络模型即为原系统模型.应用该方法建立了52SFZ—140—207B液压缓冲器的动态模型.结果表明,基于结构的神经网络建模方法对复杂非线性系统建模是有效的.

关 键 词:液压缓冲器  结构  神经网络  建模
文章编号:1006-2467(2003)05-0741-04
修稿时间:2002年5月29日

Application of Architecture-Based Neural Network in Modeling of Hydraulic Bumper
YANG Hai wei,ZHAN Yong qi,QIAO Jun wei,SHI Guang lin.Application of Architecture-Based Neural Network in Modeling of Hydraulic Bumper[J].Journal of Shanghai Jiaotong University,2003,37(5):741-744.
Authors:YANG Hai wei  ZHAN Yong qi  QIAO Jun wei  SHI Guang lin
Abstract:The structure and dynamic working process of hydraulic bumper were discussed. The modeling method using architecture based neural network was introduced. Using this method, the complex nonlinear system is divided into several simple sub systems according to its structure, each sub system is learned by a functional link neuron respectively, then the neurons are connected into a network according to the coherent relations among sub systems, the network is the system model. The dynamic model of 52SFZ 140 207B type of hydraulic bumper was established using this modeling method. The result shows that the modeling method using architecture based neural networks is suitable to the modeling of complex nonlinear system.
Keywords:hydraulic bumper  structues  neural networks  modeling
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