Repository logo
 

Machine-learned interatomic potentials by active learning: amorphous and liquid hafnium dioxide

Published version
Peer-reviewed

Change log

Authors

Krishnamoorthy, Anand Narayanan 
Holm, Christian 
Stan, Marius 

Abstract

Abstract: We propose an active learning scheme for automatically sampling a minimum number of uncorrelated configurations for fitting the Gaussian Approximation Potential (GAP). Our active learning scheme consists of an unsupervised machine learning (ML) scheme coupled with a Bayesian optimization technique that evaluates the GAP model. We apply this scheme to a Hafnium dioxide (HfO2) dataset generated from a “melt-quench” ab initio molecular dynamics (AIMD) protocol. Our results show that the active learning scheme, with no prior knowledge of the dataset, is able to extract a configuration that reaches the required energy fit tolerance. Further, molecular dynamics (MD) simulations performed using this active learned GAP model on 6144 atom systems of amorphous and liquid state elucidate the structural properties of HfO2 with near ab initio precision and quench rates (i.e., 1.0 K/ps) not accessible via AIMD. The melt and amorphous X-ray structural factors generated from our simulation are in good agreement with experiment. In addition, the calculated diffusion constants are in good agreement with previous ab initio studies.

Description

Funder: DOE, Office of Science, DE-AC02-06CH11357

Keywords

Article, /639/301/1034/1035, /639/301/119/1002, /639/301/1005/1008, /639/301/923/614, article

Journal Title

npj Computational Materials

Conference Name

Journal ISSN

2057-3960

Volume Title

6

Publisher

Nature Publishing Group UK
Sponsorship
Deutsche Forschungsgemeinschaft (German Research Foundation) (EXC 310)