Solving Three Dimensions Volterra Integral Equations (TDVIE) via a Neural Network
DOI:
https://doi.org/10.25130/tjps.v23i10.575Keywords:
: Three - dimensional Volterra Integral Equations, Artificial Neural Network, Linear Transfer Function, Levenberg-Marquardt Algorithm.Abstract
The aim of this paper is present a new numerical method for solvingThree Dimensions Volterra Integral Equations using artificial neural network by design multilayer feed forward Neural Network. A multi- layers design in our proposed method consist of a hidden layer having seven hidden units. and one linear output unit. Linear Transfer function used as each unit and using Levenberg- Marquardtalgorithmtraining. Moreover, examples on three- dimensional Volterra integral equations carried out to illustrate the accuracy and the efficiency of the presented method. In addition, some comparisons among proposed method and Shifted Chebyshev Polynomials method and Reduced Differential Transform Method are presented
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