介观物理学
电解质
材料科学
电极
接口(物质)
离子
电容
电化学
化学物理
热力学
吸附
化学
凝聚态物理
物理
物理化学
有机化学
吉布斯等温线
作者
Haolan Tao,Sijie Wang,Honglai Liu,Cheng Lian
出处
期刊:Angewandte Chemie
[Wiley]
日期:2024-10-18
卷期号:64 (6): e202418447-e202418447
被引量:42
标识
DOI:10.1002/anie.202418447
摘要
Structure and properties of the electrode/electrolyte interface significantly influence the electrochemical processes of energy storage and conversion, yet the challenge lies in accurate description of both molecular characteristics and external field effects. Here, we develop a mesoscopic thermodynamic model that calculates the thermodynamic properties of electrolytes based on chemical potential, and its efficiency is enhanced by a deep neural network. The deep neural network enhanced mesoscopic thermodynamic (DeepMT) model effectively bridges the gap between micro-level characteristics of ions and macro-level effects of external field, enabling precise presentation of ion density distributions over complex conditions. Our result indicates that the DeepMT model not only demonstrates a computational efficiency improvement of approximately four orders of magnitude over direct theoretical calculations, but also accurately predicts interface properties including ion adsorption, surface charge, and differential capacitance through the statistical analysis of density distributions.
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