Carmen Martínez-Alonso , Valentin Vassilev-Galindo , Benjamin M. Comer , Frank Abild-Pedersen , Kirsten T. Winther , Javier LLorca
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引用次数: 0
摘要
考虑到双轴弹性应变的影响,通过密度泛函理论计算了 24 种纯金属和 332 种二元金属间化合物(化学计量学为 AB、A2B 和 A3B)的最低能量表面对氢、氧和羟基的吸附能。这些信息被用来训练两个随机森林回归模型,一个用于氢吸附,另一个用于氧和羟基吸附,这两个模型基于 9 个描述符,这些描述符描述了吸附位点的几何和化学特征以及所施加的应变。模型中每种化合物的所有描述符都可以从物理化学数据库中获得。随机森林模型用于预测由金属元素组成的化学计量学为 AB、A2B 和 A3B 的 ≈2700 种二元金属间化合物对氢、氧和羟基的吸附能,其中不包括那些对环境有害、具有放射性或毒性的化合物。这些信息被用来寻找 HER 和 ORR 的潜在良好催化剂,其标准是它们对 H 和 O/OH 的吸附能应分别接近铂的吸附能。这项研究表明,经过适当训练的机器学习模型可以利用任何化合物的物理化学数据库中现成的描述符预测吸附能,其准确性与密度泛函理论计算相差无几,而且计算成本最低。此外,本文介绍的策略可以轻松扩展到其他化合物和催化反应,有望促进 ML 方法在催化领域的应用。
Application of machine learning to discover new intermetallic catalysts for the hydrogen evolution and the oxygen reduction reactions†
The adsorption energies for hydrogen, oxygen, and hydroxyl were calculated by means of density functional theory on the lowest energy surface of 24 pure metals and 332 binary intermetallic compounds with stoichiometries AB, A2B, and A3B taking into account the effect of biaxial elastic strains. This information was used to train two random forest regression models, one for the hydrogen adsorption and another for the oxygen and hydroxyl adsorption, based on 9 descriptors that characterized the geometrical and chemical features of the adsorption site as well as the applied strain. All the descriptors for each compound in the models could be obtained from physico-chemical databases. The random forest models were used to predict the adsorption energy for hydrogen, oxygen, and hydroxyl of ≈2700 binary intermetallic compounds with stoichiometries AB, A2B, and A3B made of metallic elements, excluding those that were environmentally hazardous, radioactive, or toxic. This information was used to search for potential good catalysts for the HER and ORR from the criteria that their adsorption energy for H and O/OH, respectively, should be close to that of Pt. This investigation shows that the suitably trained machine learning models can predict adsorption energies with an accuracy not far away from density functional theory calculations with minimum computational cost from descriptors that are readily available in physico-chemical databases for any compound. Moreover, the strategy presented in this paper can be easily extended to other compounds and catalytic reactions, and is expected to foster the use of ML methods in catalysis.
期刊介绍:
A multidisciplinary journal focusing on cutting edge research across all fundamental science and technological aspects of catalysis.
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