Predicting neutron experiments from first principles: a workflow powered by machine learning
Journal article, 2025

Machine learning has emerged as a powerful tool in materials discovery, enabling the rapid design of novel materials with tailored properties for countless applications, including in the context of energy and sustainability. To ensure the reliability of these methods, however, rigorous validation against experimental data is essential. Scattering techniques—using neutrons, X-rays, or electrons—offer a direct way to probe atomic-scale structure and dynamics, making them ideal for this purpose. In this work, we describe a computational workflow that bridges machine learning-based simulations with experimental validation. The workflow combines density functional theory, machine-learned interatomic potentials, molecular dynamics, and autocorrelation function analysis to simulate experimental signatures, with a focus on inelastic neutron scattering. We demonstrate the approach on three representative systems: crystalline silicon, crystalline benzene, and hydrogenated scandium-doped BaTiO3, comparing the simulated spectra to measurements from four different neutron spectrometers. While our primary focus is inelastic neutron scattering, the workflow is readily extendable to other modalities, including diffraction and quasi-elastic scattering of neutrons, X-rays, and electrons. The good agreement between simulated and experimental results highlights the potential of this approach for guiding and interpreting experiments, while also pointing out areas for further improvement.

Author

Eric Lindgren

Chalmers, Physics, Condensed Matter and Materials Theory

Adam J. Jackson

STFC Rutherford Appleton Laboratory

Erik Fransson

Chalmers, Physics, Condensed Matter and Materials Theory

Esmée Berger

Chalmers, Physics, Condensed Matter and Materials Theory

Goran Škoro

STFC Rutherford Appleton Laboratory

Svemir Rudić

STFC Rutherford Appleton Laboratory

Rastislav Turanyi

STFC Rutherford Appleton Laboratory

Sanghamitra Mukhopadhyay

STFC Rutherford Appleton Laboratory

Paul Erhart

Chalmers, Physics, Condensed Matter and Materials Theory

Journal of Materials Chemistry A

20507488 (ISSN) 20507496 (eISSN)

Vol. 13 31 25509-25520

SwedNESS

Swedish Foundation for Strategic Research (SSF) (GSn15-0008), 2016-07-01 -- 2021-06-30.

Swedish Foundation for Strategic Research (SSF) (GSn15-0008), 2017-01-01 -- 2020-12-31.

Phase behavior and electronic properties of mixed halide perovskites from atomic scale simulations

Swedish Research Council (VR) (2020-04935), 2020-12-01 -- 2024-11-30.

Subject Categories (SSIF 2025)

Condensed Matter Physics

Nanotechnology for Material Science

Areas of Advance

Materials Science

DOI

10.1039/d5ta03325j

Related datasets

Models and data supporting the paper "Predicting neutron experiments from first principles: A workflow powered by machine learning" [dataset]

DOI: 10.5281/zenodo.15283532

More information

Latest update

9/17/2025