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Using Anns Approach for Solving Fractional Order Volterra Integro-Differential Equations

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Date

2017

Journal Title

Journal ISSN

Volume Title

Publisher

Springernature

Open Access Color

GOLD

Green Open Access

No

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No
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Top 10%
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Top 10%
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Top 10%

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Abstract

Indeed, interesting properties of artificial neural networks approach made this non-parametric model a powerful tool in solving various complicated mathematical problems. The current research attempts to produce an approximate polynomial solution for special type of fractional order Volterra integrodifferential equations. The present technique combines the neural networks approach with the power series method to introduce an efficient iterative technique. To do this, a multi-layer feed-forward neural architecture is depicted for constructing a power series of arbitrary degree. Combining the initial conditions with the resulted series gives us a suitable trial solution. Substituting this solution instead of the unknown function and employing the least mean square rule, converts the origin problem to an approximated unconstrained optimization problem. Subsequently, the resulting nonlinear minimization problem is solved iteratively using the neural networks approach. For this aim, a suitable three-layer feed-forward neural architecture is formed and trained using a back-propagation supervised learning algorithm which is based on the gradient descent rule. In other words, discretizing the differential domain with a classical rule produces some training rules. By importing these to designed architecture as input signals, the indicated learning algorithm can minimize the defined criterion function to achieve the solution series coefficients. Ultimately, the analysis is accompanied by two numerical examples to illustrate the ability of the method. Also, some comparisons are made between the present iterative approach and another traditional technique. The obtained results reveal that our method is very effective, and in these examples leads to the better approximations.

Description

Khalili Golmankhaneh, Alireza/0000-0002-5008-0163

Keywords

Fractional Equation, Power-Series Method, Artificial Neural Networks Approach, Criterion Function, Back-Propagation Learning Algorithm, Economics, Fractional Order Control, Mathematical analysis, Quantum mechanics, Fractional equation, Volterra equations, Engineering, Differential equation, FOS: Mathematics, Back-propagation learning algorithm, Anomalous Diffusion Modeling and Analysis, Order (exchange), Integral equation, Analysis and Design of Fractional Order Control Systems, Artificial neural networks approach, Physics, Fractional calculus, Power-series method, QA75.5-76.95, Applied mathematics, Volterra integral equation, Computer science, Control and Systems Engineering, Electronic computers. Computer science, Modeling and Simulation, Physical Sciences, Nonlinear system, Thermodynamics, Criterion function, Differential (mechanical device), Mathematics, Finance

Fields of Science

02 engineering and technology, 01 natural sciences, 0103 physical sciences, 0202 electrical engineering, electronic engineering, information engineering

Citation

Jafarian, Ahmad...et al. (2017). Using ANNs Approach for Solving Fractional Order Volterra Integro-differential Equations, International Journal Of Computational Intelligence Systems, 10(1), 470-480.

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
18

Source

International Journal of Computational Intelligence Systems

Volume

10

Issue

1

Start Page

470

End Page

480
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Citations

CrossRef : 17

Scopus : 21

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Mendeley Readers : 10

SCOPUS™ Citations

21

checked on Feb 25, 2026

Web of Science™ Citations

16

checked on Feb 25, 2026

Page Views

3

checked on Feb 25, 2026

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1.5827

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