绝对标准氢电极电位以及原子和分子的氧化还原电位:机器学习辅助第一原理计算

Ryosuke Jinnouchi, Ferenc Karsai, Georg Kresse
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引用次数: 0

摘要

构建一个自洽的第一原理框架,通过限温分子动力学模拟准确预测电子转移反应的性质,是理论电化学家和物理化学家的梦想。然而,即使是作为电极电位最基本参考的绝对标准氢电极电位的预测也极具挑战性。在这里,我们展示了一种包含 25% 精确交换的混合函数,当利用机器学习力场和 $\Delta$ 机器学习模型,通过热力学积分和热力学扰动理论计算实现统计上精确的相空间采样时,这种混合函数可以进行定量预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Absolute standard hydrogen electrode potential and redox potentials of atoms and molecules: machine learning aided first principles calculations
Constructing a self-consistent first-principles framework that accurately predicts the properties of electron transfer reactions through finite-temperature molecular dynamics simulations is a dream of theoretical electrochemists and physical chemists. Yet, predicting even the absolute standard hydrogen electrode potential, the most fundamental reference for electrode potentials, proves to be extremely challenging. Here, we show that a hybrid functional incorporating 25 % exact exchange enables quantitative predictions when statistically accurate phase-space sampling is achieved via thermodynamic integrations and thermodynamic perturbation theory calculations, utilizing machine-learned force fields and $\Delta$-machine learning models. The application to seven redox couples, including molecules and transition metal ions, demonstrates that the hybrid functional can predict redox potentials across a wide range of potentials with an average error of 80 mV.
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