Multilayer Neural Networks Enhanced With Hybrid Methods for Solving Fractional Partial Differential Equations
No Thumbnail Available
Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Wiley
Abstract
This paper introduces a novel multilayer neural network technique to solve partial differential equations with non-integer derivatives (FPDEs). The proposed model is a deep feed-forward multiple layer neural network (DFMLNN) that is trained using advanced optimization approaches, namely adaptive moment estimation (Adam) and limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS), which integrate neural networks. First, the Adam method is employed for training, and then the model is further improved using L-BFGS. The Laplace transform is used, concentrating on the Caputo fractional derivative, to approximate the FPDE. The efficacy of this strategy is confirmed through rigorous testing, which involves making predictions and comparing the outcomes with exact solutions. The results illustrate that this combined approach greatly improves both precision and effectiveness. This proposed multilayer neural network offers a robust and reliable framework for solving FPDEs.
Description
Keywords
Adam Algorithm, Deep Neural Network, Fractional Partial Differential Equations, Laplace Transform Method, Limited-Memory Broyden-Fletcher-Goldfarb-Shanno
Turkish CoHE Thesis Center URL
WoS Q
Q3
Scopus Q
Q2
Source
Volume
38
Issue
4