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基于RBF网络的非线性动力系统辨识方法的改进
引用本文:赵永辉 邹经湘. 基于RBF网络的非线性动力系统辨识方法的改进[J]. 哈尔滨工业大学学报, 1999, 31(6): 22-25,39
作者姓名:赵永辉 邹经湘
作者单位:哈尔滨工业大学航天工程与力学系!黑龙江哈尔滨150001
基金项目:国家自然科学基金!(59493700),机械工业发展基金!(9452004)
摘    要:基于资源分配网络(RAN)的增长标准并结合隐单元的修剪 策略,提出了同时具有增长及修剪功能的径向基函数(RBF)网络结构学习方案。利用该方案进行了非线性时间序列的建模以及振动系统中的未知非线性力的识别。结果表明:提出的网络结构8学习算法是有效的;RBF网络对非线性时间序列具有很高的建模精度 ;振动系统未知非线性力的神经网络识别法是可行的。

关 键 词:神经网络 系统辨识 RBF网络 非线性动力系统

Improved of the identification of nonlinear dynamic system based on RBF neural networks
ZHAO Yong hui,ZOU Jing xiang,TU Liang yao. Improved of the identification of nonlinear dynamic system based on RBF neural networks[J]. Journal of Harbin Institute of Technology, 1999, 31(6): 22-25,39
Authors:ZHAO Yong hui  ZOU Jing xiang  TU Liang yao
Abstract:Structural learning scheme with growing and pruning functions is developed for radial basis function network, which uses growing criterion of resource allocation network and combines pruning strategy of hidden units. Nonlinear time series are modeled and the nonlinear force in vibration system is identified using this scheme. Results show that network structural learning algorithm proposed in this paper is effective; RBF network can model nonlinear time series with high precision; neural network identification scheme for unknown nonlinear force in vibration system is feasible.
Keywords:neural networks  nonlinear system  system identification
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