Comparison of Artificial Neural Network Architecture in Solving Ordinary Differential Equations

Susmita Mall, S. Chakraverty
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引用次数: 39

Abstract

This paper investigates the solution of Ordinary Differential Equations (ODEs) with initial conditions using Regression Based Algorithm (RBA) and compares the results with arbitrary- and regression-based initial weights for different numbers of nodes in hidden layer. Here, we have used feed forward neural network and error back propagation method for minimizing the error function and for the modification of the parameters (weights and biases). Initial weights are taken as combination of randomas well as by the proposed regression based model. We present the method for solving a variety of problems and the results are compared. Here, the number of nodes in hidden layer has been fixed according to the degree of polynomial in the regression fitting. For this, the input and output data are fitted first with various degree polynomials using regression analysis and the coefficients involved are taken as initial weights to start with the neural training. Fixing of the hidden nodes depends upon the degree of the polynomial. For the example problems, the analytical results have been compared with neural results with arbitrary and regression based weights with four, five, and six nodes in hidden layer and are found to be in good agreement.
求解常微分方程的人工神经网络结构比较
利用基于回归的算法(RBA)研究了具有初始条件的常微分方程(ode)的解,并对隐层中不同节点数的初始权值与基于任意权值和基于回归权值的解进行了比较。在这里,我们使用前馈神经网络和误差反向传播方法来最小化误差函数和修改参数(权重和偏差)。初始权值采用随机组合和基于回归的模型。我们提出了解决各种问题的方法,并对结果进行了比较。在这里,隐层的节点数是根据回归拟合中多项式的程度来固定的。为此,首先使用回归分析方法对输入输出数据进行不同程度的多项式拟合,并将所涉及的系数作为初始权值,开始神经网络的训练。隐藏节点的固定取决于多项式的程度。对于实例问题,将分析结果与任意权值和基于回归的隐层4、5、6节点的神经网络结果进行了比较,结果吻合较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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