Equivariant machine learning of Electric Field Gradients -- Predicting the quadrupolar coupling constant in the MAPbI$_3$ phase transition — Bernhard Schmiedmayer (2025) | RDL Network
Equivariant machine learning of Electric Field Gradients -- Predicting the quadrupolar coupling constant in the MAPbI$_3$ phase transition
Preprint 2025 en
Authors
BS
Bernhard Schmiedmayer
JW
J. W. Wolffs
GW
G. A. de Wijs
Abstract
1 min read
We present a strategy combining machine learning and first-principles calculations to achieve highly accurate nuclear quadrupolar coupling constant predictions. Our approach employs two distinct machine-learning frameworks: a machine-learned force field to generate molecular dynamics trajectories and a second model for electric field gradients that preserves rotational and translational symmetries. By incorporating thermostat-driven molecular dynamics sampling, we enable the prediction of quadrupolar coupling constants in highly disordered materials at finite temperatures. We validate our method by predicting the tetragonal-to-cubic phase transition temperature of the organic-inorganic halide perovskite MAPbI$_3$, obtaining results that closely match experimental data.
Ryusuke Uchida, Silvia Binet, Neha Arora, Gwénolé Jacopin, Mohammad Hayal Alotaibi, Andreas Taubert, Shaik M. Zakeeruddin, M. Ibrahim Dar, Michael Graetzel
Discussion(0)
No comments yet. Be the first to comment.