Department of Physical Mathematics, University of Brisbane, Brisbane, Australia
Short Communication
Machine Learning-driven Numerical Solutions to Partial Differential Equations
Author(s): Scott Rolfo*
Partial differential equations are fundamental mathematical tools used to describe a wide range of physical phenomena, from fluid dynamics and
heat conduction to quantum mechanics and financial modeling. Solving PDEs is crucial for understanding and predicting the behavior of these
systems, but traditional numerical methods, such as finite difference, finite element, and spectral methods, often encounter significant challenges
when dealing with complex, high-dimensional problems. In recent years, machine learning has emerged as a powerful alternative or complement
to classical numerical methods, offering new approaches for efficiently solving PDEs. Machine learning-driven numerical solutions to PDEs have
the potential to revolutionize computational science by providing more accurate, faster, and scalable solutions. One of the key motivations for
integrating mac.. Read More»
DOI:
10.37421/2168-9679.2024.13.571
Journal of Applied & Computational Mathematics received 1282 citations as per Google Scholar report