Bulletin of the American Physical Society
APS April Meeting 2019
Volume 64, Number 3
Saturday–Tuesday, April 13–16, 2019; Denver, Colorado
Session K01: Poster Session II (14:00-17:00)
2:00 PM,
Sunday, April 14, 2019
Sheraton
Room: Plaza Foyer
Abstract: K01.00044 : Prediction of bond orders using deep neural networks
Presenter:
Sergey I Magedov
(New Mexico Institute of Mining and Technology)
Authors:
Sergey I Magedov
(New Mexico Institute of Mining and Technology)
Benjamin Nebgen
(Los Alamos National Laboratory)
Nicholas Lubbers
(Los Alamos National Laboratory)
Kipton Barros
(Los Alamos National Laboratory)
Sergei Tretiak
(Los Alamos National Laboratory)
It has been shown in previous works that machine learning (ML) can be utilized to correctly predict atomic partial charges. This success has paved the way for predicting more advanced molecular properties. The hierarchical interacting particle neural network (HIP-NN) provides a model framework to predict covalent, ionic, and total bond order matricies. Utilizing HIP-NN, we were able to predict, with high efficiency, the coefficient bond order matrix with reference to density functional theory (DFT) calculations. The neural network was trained to a set of different molecular arrangements of hydrogen, oxygen, carbon, and nitrogen atoms. By training HIP-NN to this large set of DFT computed training molecules we were able to reduce the error between the outputted values of the coefficient bond order matrix and the values predicted by DFT to only be on the scale of 1e-3. This error reduction, combined with computational speed, demonstrates that ML could be a potential avenue for computing bond order matrices for molecules.
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