OKWUWE, Joshua and ODUSELU-HASSAN, Oladayo Emmanuel (2024) AI-Augmented Finite Difference Methods for Solving PDES: Advancing Numerical Solutions in Mathematical Modeling. Asian Journal of Mathematics and Computer Research, 31 (4). pp. 56-67. ISSN 2395-4213
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Abstract
This study explores the integration of artificial intelligence (AI) with finite difference methods (FDM) to enhance the numerical solution of partial differential equations (PDEs) in physics, engineering, and data science. Traditional FDM approaches, though effective for approximating solutions to PDEs, face limitations in handling high-dimensional, nonlinear, or computationally intensive problems due to constraints in grid size and stability. AI techniques, particularly machine learning (ML) and deep learning (DL), offer promising enhancements, including adaptive grid refinement, optimized time-stepping, and model selection, which significantly improve accuracy and computational efficiency. Using Python-based implementations, this research investigates AI-augmented FDM for various PDEs, including the heat equation, wave equation, Laplace’s equation, and Burger’s equation. Simulation results demonstrate that AI-enhanced FDM not only achieves robust performance but also reduces computational costs by focusing resources on high-error regions in real time. These findings highlight the potential of AI-driven techniques to revolutionize numerical modeling in applications such as fluid dynamics, climate modeling, and wave propagation. This interdisciplinary approach opens avenues for scalable and efficient solutions to complex PDEs, with implications for diverse fields like healthcare, finance, and geophysics. Future research will focus on extending these methods to more intricate PDEs and exploring their application in real-world, resource-constrained scenarios.
| Item Type: | Article |
|---|---|
| Subjects: | STM Library Press > Mathematical Science |
| Depositing User: | Unnamed user with email support@stmlibrarypress.com |
| Date Deposited: | 02 Jan 2025 10:15 |
| Last Modified: | 29 Oct 2025 11:52 |
| URI: | http://archive.go4subs.com/id/eprint/2063 |
