Boundary Value Problems (Jul 2023)

An application of artificial neural networks for solving fractional higher-order linear integro-differential equations

  • T. Allahviranloo,
  • A. Jafarian,
  • R. Saneifard,
  • N. Ghalami,
  • S. Measoomy Nia,
  • F. Kiani,
  • U. Fernandez-Gamiz,
  • S. Noeiaghdam

DOI
https://doi.org/10.1186/s13661-023-01762-x
Journal volume & issue
Vol. 2023, no. 1
pp. 1 – 14

Abstract

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Abstract This ongoing work is vehemently dedicated to the investigation of a class of ordinary linear Volterra type integro-differential equations with fractional order in numerical mode. By replacing the unknown function by an appropriate multilayered feed-forward type neural structure, the fractional problem of such initial value is changed into a course of non-linear minimization equations, to some extent. Put differently, interest was sparked in structuring an optimized iterative first-order algorithm to estimate solutions for the origin fractional problem. On top of that, some computer simulation models exemplify the preciseness and well-functioning of the indicated iterative technique. The outstanding accomplished numerical outcomes conveniently reflect the productivity and competency of artificial neural network methods compared to customary approaches.

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