Bulletin of the American Physical Society
APS March Meeting 2019
Volume 64, Number 2
Monday–Friday, March 4–8, 2019; Boston, Massachusetts
Session E22: Computational Materials Design and Discovery -- Machine Learning
8:00 AM–10:48 AM,
Tuesday, March 5, 2019
BCEC
Room: 157C
Sponsoring
Units:
DMP DCOMP
Chair: Xavier Gonze, Universite catholique de Louvain
Abstract: E22.00010 : Machine Learning for Energetic Material Detonation Performance
9:48 AM–10:00 AM
Presenter:
Brian Barnes
(US Army Research Laboratory)
Author:
Brian Barnes
(US Army Research Laboratory)
We create models to predict detonation velocity and detonation pressure. Molecules evaluated are CHNO-containing organic molecules drawn from GDB datasets, and known explosives. Usefulness of a variety of feature descriptors (e.g. Morgan fingerprints), are compared. Kernel and activation functions, hyperparameter optimization, and relative accuracy of models are discussed. Algorithms evaluated include neural networks, least absolute shrinkage and selection operator regression (“Lasso”), random forest regression, and Gaussian process regression. The Python workflow for automated dataset generation and analysis is also discussed.
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