Bulletin of the American Physical Society
APS March Meeting 2019
Volume 64, Number 2
Monday–Friday, March 4–8, 2019; Boston, Massachusetts
Session F21: Advances in Computational Methods for Statistical Physics and Their Applications II
11:15 AM–2:03 PM,
Tuesday, March 5, 2019
BCEC
Room: 157B
Sponsoring
Units:
DCOMP DCMP GSNP
Chair: Danny Perez, Los Alamos National Laboratory
Abstract: F21.00002 : Data-Free Deep Neural Networks for Solving Partial Differential Equations in Nanobiophysics
11:51 AM–12:03 PM
Presenter:
Martin Magill
(University of Ontario Institute of Technology)
Authors:
Martin Magill
(University of Ontario Institute of Technology)
Andrew Nagel
(University of Ontario Institute of Technology)
Hendrick W de Haan
(University of Ontario Institute of Technology)
A new method for solving PDEs is to approximate solutions with deep neural networks (DNNs). DNNs can even learn solutions directly from the PDE problem statement, without using any external data. In this talk, I will illustrate some benefits of this method for solving PDEs in NBP. DNNs are memory-efficient, enabling complicated electric fields to be used in GPU-accelerated particle simulations. Surprisingly, DNNs can actually solve high-dimensional PDEs directly, as an alternative to particle simulations. Finally, this method can naturally be extended to express target observables as differentiable functions of problem parameters.
Follow Us |
Engage
Become an APS Member |
My APS
Renew Membership |
Information for |
About APSThe American Physical Society (APS) is a non-profit membership organization working to advance the knowledge of physics. |
© 2024 American Physical Society
| All rights reserved | Terms of Use
| Contact Us
Headquarters
1 Physics Ellipse, College Park, MD 20740-3844
(301) 209-3200
Editorial Office
100 Motor Pkwy, Suite 110, Hauppauge, NY 11788
(631) 591-4000
Office of Public Affairs
529 14th St NW, Suite 1050, Washington, D.C. 20045-2001
(202) 662-8700