A highly accurate artificial neural networks scheme for solving higher multi‐order fractal‐fractional differential equations based on generalized Caputo derivative

Author:

Shloof A. M.12,Ahmadian A.345ORCID,Senu N.16ORCID,Salahshour Soheil7,Ibrahim S. N. I.1,Pakdaman M.8

Affiliation:

1. Department of Mathematics and Statistics Universiti Putra Malaysia Selangor Malaysia

2. Department of Mathematics, Faculty of Science Al‐Zintan University Libya

3. College of Engineering and Aviation, School of Engineering and Technology Central Queensland University Rockhampton Australia

4. Department of Computer Science and Mathematics Lebanese American University Beirut Lebanon

5. Department of Mathematics Near East University, Nicosia Mersin Turkey

6. Institute for Mathematical Research Universiti Putra Malaysia Selangor Malaysia

7. Faculty of Engineering and Natural Sciences Bahcesehir University Istanbul Turkey

8. Atmospheric Science and Meteorological Research Center (ASMERC) Climatological Research Institute Mashhad Iran

Abstract

AbstractArtificial neural networks have great potential for learning and stability in the face of tiny input data changes. As a result, artificial intelligence techniques and modeling tools have a growing variety of applications. To estimate a solution for fractal‐fractional differential equations (FFDEs) of high‐order linear (HOL) with variable coefficients, an iterative methodology based on a mix of a power series method and a neural network approach was applied in this study. In the algorithm's equation, an appropriate truncated series of the solution functions was replaced. To tackle the issue, this study uses a series expansion of an unidentified function, where this function is approximated using a neural architecture. Some examples were presented to illustrate the efficiency and usefulness of this technique to prove the concept's applicability. The proposed methodology was found to be very accurate when compared to other available traditional procedures. To determine the approximate solution to FFDEs‐HOL, the suggested technique is simple, highly efficient, and resilient.

Publisher

Wiley

Subject

Applied Mathematics,General Engineering,Numerical Analysis

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