On the feed-forward neural network for analyzing pantograph equations

Author:

Az-Zo’bi Emad A.1ORCID,Shah Rasool2,Alyousef Haifa A.3ORCID,Tiofack C. G. L.4ORCID,El-Tantawy S. A.56ORCID

Affiliation:

1. Department of Mathematics and Statistics, Mutah University 1 , Al Karak 61710, Jordan

2. Department of Computer Science and Mathematics, Lebanese American University 2 , P.O. Box 13-5053, Beirut, Lebanon

3. Department of Physics, College of Science, Princess Nourah bint Abdulrahman University 3 , P.O. Box 84428, Riyadh 11671, Saudi Arabia

4. Faculty of Sciences, University of Maroua 4 , P.O. Box 814, Maroua, Cameroon

5. Department of Physics, Faculty of Science, Port Said University 5 , Port Said 42521, Egypt

6. Research Center for Physics (RCP), Department of Physics, Faculty of Science and Arts, Al-Mikhwah, Al-Baha University 6 , Al-Baha 1988, Saudi Arabia

Abstract

Ordinary differential equations (ODEs) are fundamental tools for modeling and understanding a wide range of chemistry, physics, and biological phenomena. However, solving complex ODEs often presents significant challenges, necessitating advanced numerical approaches beyond traditional analytical techniques. Thus, a novel machine learning (ML)-based method for solving and analyzing ODEs is proposed in the current investigation. In this study, we utilize a feed-forward neural network (FNN) with five fully connected layers trained on data samples generated from the exact solutions of specific ODEs. To show the efficacy of our suggested method, we will conduct a thorough evaluation by comparing the anticipated solutions of the FNN with the exact solutions for some ODEs. Furthermore, we analyze the absolute error and present the loss functions for some ODE examples, providing valuable insights into the model’s performance and potential areas for further development.

Publisher

AIP Publishing

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