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A Physics-Informed Neural Network Framework for PDEs on 3D Surfaces: Time Independent Problems | IEEE Journals & Magazine | IEEE Xplore

A Physics-Informed Neural Network Framework for PDEs on 3D Surfaces: Time Independent Problems


Solution of LaplaceBeltrami equation on the surface of a bunny (front and back).

Abstract:

Partial differential equations (PDEs) on surfaces are ubiquitous in all the nature science. Many traditional mathematical methods has been developed to solve surfaces PDE...Show More

Abstract:

Partial differential equations (PDEs) on surfaces are ubiquitous in all the nature science. Many traditional mathematical methods has been developed to solve surfaces PDEs. However, almost all of these methods have obvious drawbacks and complicate in general problems. As the fast growth of machine learning area, we show an algorithm by using the physics-informed neural networks (PINNs) to solve surface PDEs. To deal with the surfaces, our algorithm only need a set of points and their corresponding normal, while the traditional methods need a partition or a grid on the surface. This is a big advantage for real computation. A variety of numerical experiments have been shown to verify our algorithm.
Solution of LaplaceBeltrami equation on the surface of a bunny (front and back).
Published in: IEEE Access ( Volume: 8)
Page(s): 26328 - 26335
Date of Publication: 31 December 2019
Electronic ISSN: 2169-3536

Funding Agency:


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