Bulletin of the American Physical Society
APS March Meeting 2019
Volume 64, Number 2
Monday–Friday, March 4–8, 2019; Boston, Massachusetts
Session H52: Machine Learning in Nonlinear Physics and Mechanics
2:30 PM–5:18 PM,
Tuesday, March 5, 2019
BCEC
Room: 253B
Sponsoring
Units:
GSOFT GSNP
Chair: Shmuel Rubinstein, Harvard University
Abstract: H52.00001 : A case study in neural networks for scientific data: generating atomic structures
2:30 PM–3:06 PM
Presenter:
Tess Smidt
(Computational Research Division, Lawrence Berkeley National Laboratory)
Author:
Tess Smidt
(Computational Research Division, Lawrence Berkeley National Laboratory)
We present examples of these challenges when applying deep learning techniques to the generation of atomic systems (new atomic arrangements that may be crystals, molecules, nanoclusters, polymers, proteins, etc.). We present a novel rotation-equivariant convolutional neural network -- or tensor field network -- that has the ability to articulate, recognize and differentiate local and global features in any orientation in complex atomic systems. We discuss strategies for generating hypothetical atomic structures using the concepts of geometric motifs (the recurring patterns of atoms in materials) and neural networks that can manipulate discrete geometry. We present the use of toy models to test the expressiveness and accuracy of tensor field network operations.
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