应用切比雪夫神经网络求解范德波尔方程

S. Seddighi Chaharborj, Shahriar S. Chaharborj, Phang Pei See
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引用次数: 3

摘要

在动力学中,范德波尔振子是一种具有非线性阻尼的非保守振子。本文研究了单井、双井和双峰Van der Pol-Dufing方程问题。切比雪夫神经网络(ChNN)模型将首次用于求解这类方程的数值解。采用单层神经网络,利用切比雪夫多项式展开输入模式,消除了隐层。为了修正网络参数并使计算误差函数最小,采用了误差反向传播原理的前馈神经网络模型。将从ChNN模型中得到的数值结果与解析解进行比较,即同伦摄动法(HPM)、同伦分析法(HAM)、微分变换法(DTM)和exact。与已有数值结果的比较表明,该方法是求解这类非线性问题的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Chebyshev neural network to solve Van der Pol equations
In dynamics, the Van der Pol oscillator is a non-conservative oscillator with non-linear damping. The problems of single-well, double-well and double-hump Van der Pol-Dufing equations are studied in this paper. The Chebyshev Neural Network (ChNN) model will be applied to obtain the numerical solutions of these types of equations for the first time. The hidden layer is eliminated by expanding the input pattern by Chebyshev polynomials which employs a single layer neural network. In order to modify the network parameters and to minimize the computed error function, a feed forward neural network model with error back propagation principle is used. The obtained numerical results form the ChNN model will be compared with the analytical solutions, namely Homotopy Perturbation Method (HPM), Homotopy Analysis Method (HAM), Differential Transform Method (DTM) and exact. Comparisons of the solutions obtained with existing numerical results show that this method is a capable tool for solving this kind of nonlinear problems.
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