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Machine learning-aided first-principles calculations of redox potentials

Chemistry

Machine learning-aided first-principles calculations of redox potentials

R. Jinnouchi, F. Karsai, et al.

Discover an innovative approach that blends first-principles calculations with machine learning to predict redox potentials with impressive accuracy. This groundbreaking research from Ryosuke Jinnouchi, Ferenc Karsai, and Georg Kresse offers insights into essential half-cell reactions like Fe³⁺/Fe²⁺ and more!... show more
Abstract
We present a method combining first-principles calculations and machine learning to predict the redox potentials of half-cell reactions on the absolute scale. By applying machine learning force fields for thermodynamic integration from the oxidized to the reduced state, we achieve efficient statistical sampling over a broad phase space. Furthermore, through thermodynamic integration from machine learning force fields to potentials of semi-local functionals, and from semi-local functionals to hybrid functionals using Δ-machine learning, we refine the free energy with high precision step-by-step. Utilizing a hybrid functional that includes 25% exact exchange (PBE0), this method predicts the redox potentials of the three redox couples, Fe3+/Fe2+, Cu2+/Cu+, and Ag2+/Ag+, to be 0.92, 0.26, and 1.99 V, respectively. These predictions are in good agreement with the best experimental estimates (0.77, 0.15, 1.98 V). This work demonstrates that machine-learned surrogate models provide a flexible framework for refining the accuracy of free energy from coarse approximation methods to precise electronic structure calculations, while also facilitating sufficient statistical sampling.
Publisher
npj Computational Materials
Published On
May 20, 2024
Authors
Ryosuke Jinnouchi, Ferenc Karsai, Georg Kresse
Tags
redox potentials
machine learning
first-principles calculations
thermodynamic integration
free energy calculations
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