Published September 12, 2024 | Version v1
Journal article Open

Accelerating multiscale electronic stopping power predictions with time-dependent density functional theory and machine learning

  • 1. Argonne National Laboratory
  • 2. University of Chicago
  • 3. University of Illinois

Description

Knowing the rate at which particle radiation releases energy in a material, the "stopping power," is key to designing nuclear reactors, medical treatments, semiconductor and quantum materials, and many other technologies. While the nuclear contribution to stopping power, i.e., elastic scattering between atoms, is well understood in the literature, the route for gathering data on the electronic contribution has for decades remained costly and reliant on many simplifying assumptions, including that materials are isotropic. We establish a method that combines time-dependent density functional theory (TDDFT) and machine learning to reduce the time to assess new materials to hours on a supercomputer and provide valuable data on how atomic details influence electronic stopping. Our approach uses TDDFT to compute the electronic stopping from first principles in several directions and then machine learning to interpolate to other directions at a cost of 10 million times fewer core-hours. We demonstrate the combined approach in a study of proton irradiation in aluminum and employ it to predict how the depth of maximum energy deposition, the "Bragg Peak," varies depending on the incident angle—a quantity otherwise inaccessible to modelers and far outside the scales of quantum mechanical simulations. The lack of any experimental information requirement makes our method applicable to most materials, and its speed makes it a prime candidate for enabling quantum-to-continuum models of radiation damage. The prospect of reusing valuable TDDFT data for training the model makes our approach appealing for applications in the age of materials data science.

Data availability

Additional data and materials are available online. The datasets include the outputs from RT-TDDFT simulations, and the software and output files from the machine learning study. The machine learning software is also available on GitHub at https://github.com/globus-labs/stopping-power-ml/releases/tag/mdfv231027.

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Additional details

Identifiers

DOI
10.1038/s41524-024-01374-8
Other
oai:uchicago.tind.io:13545

Funding

U.S. Department of Energy
DE-AC02-06CH11357
Office of Naval Research
N00014-18-1-2605
National Science Foundation
OAC-1740219
National Science Foundation
OAC-2209857

UChicago Information

Division(s)
Physical Sciences Division
Department(s)
Computer Science