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基于吸附质和基底性质的金属分子吸附可转移预测模型。

A transferable prediction model of molecular adsorption on metals based on adsorbate and substrate properties.

作者信息

Restuccia Paolo, Ahmad Ehsan A, Harrison Nicholas M

机构信息

Department of Chemistry, Imperial College London, 82 Wood Lane, London, W12 0BZ, UK.

出版信息

Phys Chem Chem Phys. 2022 Jul 13;24(27):16545-16555. doi: 10.1039/d2cp01572b.

Abstract

Surface adsorption is one of the fundamental processes in numerous fields, including catalysis, the environment, energy and medicine. The development of an adsorption model which provides an effective prediction of binding energy in minutes has been a long term goal in surface and interface science. The solution has been elusive as identifying the intrinsic determinants of the adsorption energy for various compositions, structures and environments is non-trivial. We introduce a new and flexible model for predicting adsorption energies to metal substrates. The model is based on easily computed, intrinsic properties of the substrate and adsorbate, which are the same for all the considered systems. It is parameterised using machine learning based on first-principles calculations of probe molecules (, HO, CO, O, N) adsorbed to a range of pure metal substrates. The model predicts the computed dissociative adsorption energy to metal surfaces with a correlation coefficient of 0.93 and a mean absolute error of 0.77 eV for the large database of molecular adsorption energies provided by Catalysis-Hub.org which have a range of 15 eV. As the model is based on pre-computed quantities it provides near-instantaneous estimates of adsorption energies and it is sufficiently accurate to eliminate around 90% of candidates in screening study of new adsorbates. The model, therefore, significantly enhances current efforts to identify new molecular coatings in many applied research fields.

摘要

表面吸附是众多领域中的基本过程之一,包括催化、环境、能源和医学。开发一种能在几分钟内有效预测结合能的吸附模型一直是表面和界面科学的长期目标。由于确定各种组成、结构和环境下吸附能的内在决定因素并非易事,因此解决方案一直难以捉摸。我们引入了一种用于预测金属基底吸附能的新型灵活模型。该模型基于基底和吸附质易于计算的内在性质,这些性质在所有考虑的系统中都是相同的。它通过基于对一系列纯金属基底吸附的探针分子(、HO、CO、O、N)的第一性原理计算的机器学习进行参数化。对于Catalysis-Hub.org提供的分子吸附能大数据库(范围为15 eV),该模型预测计算得到的金属表面解离吸附能,相关系数为0.93,平均绝对误差为0.77 eV。由于该模型基于预先计算的量,它能提供几乎即时的吸附能估计,并且在筛选新吸附质的研究中足够准确,能够排除约90%的候选物。因此,该模型显著增强了当前在许多应用研究领域中识别新分子涂层的努力。

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