Solving Partial Differential Equations Using Artificial Neural Networks
Carlos Uriarte

TL;DR
This paper explores the use of artificial neural networks as a novel and effective approach for solving partial differential equations, offering new methods that extend traditional numerical techniques.
Contribution
It introduces neural network-based methods inspired by finite element and Ritz approaches, addressing challenges in traditional PDE solving techniques.
Findings
Neural networks can effectively approximate PDE solutions.
Proposed methods improve handling of parametric problems.
Memory strategies overcome numerical integration limitations.
Abstract
Partial differential equations have a wide range of applications in modeling multiple physical, biological, or social phenomena. Therefore, we need to approximate the solutions of these equations in computationally feasible terms. Nowadays, among the most popular numerical methods for solving partial differential equations in engineering, we encounter the finite difference and finite element methods. An alternative numerical method that has recently gained popularity for numerically solving partial differential equations is the use of artificial neural networks. Artificial neural networks, or neural networks for short, are mathematical structures with universal approximation properties. In addition, thanks to the extraordinary computational development of the last decade, neural networks have become accessible and powerful numerical methods for engineers and researchers. For example,…
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Taxonomy
TopicsNeural Networks and Applications
