Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session R20: Data Science III: Deep Learning
8:00 AM–11:00 AM,
Thursday, March 5, 2020
Room: 301
Sponsoring
Unit:
GDS
Chair: Emine Kucukbenli, Harvard University
Abstract: R20.00010 : Rapid machine learning-based solutions of partial differential equations on complex domains.
Presenter:
Vikas Dwivedi
(Indian Inst of Tech-Madras)
Authors:
Vikas Dwivedi
(Indian Inst of Tech-Madras)
Balaji Srinivasan
(Indian Inst of Tech-Madras)
solve PDEs on complex computational domains. Their method is based on an ansatz for the solution which requires deep neural networks and an unconstrained gradient-based optimization method such as gradient descent or a quasi-Newton method. In this paper, we present physics informed extreme learning machine (PIELM), a new machine-learning algorithm,
which solves this problem with a simpler neural network architecture and an extremely fast learning routine. We demonstrate the efficacy of our method by solving the Poisson and biharmonic equation on complex 2D and 3D geometries such as the gyroid, which has important engineering applications.
Reference
[1] Berg, Jens, and Kaj Nyström. ”A unified deep artificial neural network approach to partial differential equations in complex geometries.” Neurocomputing 317 (2018): 28-41.
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