非线性系统的神经网络自适应跟踪

D. Rao, M. Gupta, H. Wood
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引用次数: 2

摘要

神经网络有可能为非线性系统的建模和控制提供一个通用的框架。传统的神经网络模型是对生物神经结构的模仿,具有学习速度慢的缺点。本文提出了一种动态神经网络结构,它是基于神经元亚群的集体计算,从而不同于传统的神经网络结构。阐述了该神经网络模型的结构和修改权值的学习算法。该动态神经网络的三种应用,即(i)泛函逼近,(ii)未知非线性动态系统的控制,以及(iii)多系统的协调和控制,通过计算机模拟进行了描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive tracking in nonlinear systems using neural networks
Neural networks potentially offer a general framework for modeling and control of nonlinear systems. The conventional neural network models are a parody of biological neural structures, and have the disadvantage of very slow learning. In this paper, we develop a dynamic neural network structure which is based upon the collective computation of subpopulation of neurons, thus different from the conventionally assumed structure of neural networks. The architecture and the learning algorithm to modify weights of the proposed neural model are elucidated. Three applications of this dynamic neural network, namely (i) functional approximation, (ii) control of unknown nonlinear dynamic systems, and (iii) coordination and control of multiple systems, are described through computer simulations.<>
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