MRS Meetings and Events

 

DS01.09.10 2022 MRS Spring Meeting

Exploring the Necessary Complexity of Interatomic Potentials

When and Where

May 11, 2022
3:45pm - 4:00pm

Hawai'i Convention Center, Level 3, Lili'U Theater, 310

Presenter

Co-Author(s)

Joshua Vita1,Dallas Trinkle1

University of Illinois at Urbana-Champaign1

Abstract

Joshua Vita1,Dallas Trinkle1

University of Illinois at Urbana-Champaign1
The application of machine learning models and algorithms towards describing atomic interactions has been a major area of interest in materials simulations in recent years, as machine learning interatomic potentials (MLIPs) are seen as being more flexible and accurate than their classical potential counterparts. This increase in accuracy of MLIPs over classical potentials has come at the cost of significantly increased complexity, leading to higher computational costs and lower physical interpretability and spurring research into improving the speeds and interpretability of MLIPs. As an alternative, in this work we leverage “machine learning” fitting databases and advanced optimization algorithms to fit a class of spline-based classical potentials, showing that they can be systematically improved in order to achieve accuracies comparable to those of low-complexity MLIPs. These results demonstrate that high model complexities may not be strictly necessary in order to achieve near-DFT accuracy in interatomic potentials and suggest an alternative route towards sampling the high accuracy, low complexity region of model space by starting with forms that promote simpler and more interpretable interatomic potentials.

Symposium Organizers

Mathieu Bauchy, University of California, Los Angeles
Mathew Cherukara, Argonne National Laboratory
Grace Gu, University of California, Berkeley
Badri Narayanan, University of Louisville

Publishing Alliance

MRS publishes with Springer Nature