高效机器学习辅助筛选双金属纳米团簇对氢的吸附

IF 3.784 3区 化学 Q1 Chemistry
Marc O. J. Jäger*, Yashasvi S. Ranawat, Filippo Federici Canova, Eiaki V. Morooka, Adam S. Foster
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引用次数: 13

摘要

由于材料的催化活性经常在纳米尺度上发生变化,纳米团簇为寻找有前途的催化剂候选物增加了一个额外的维度。然而,相关原子位置的大搜索空间加剧了计算筛选方法的挑战,需要开发新的技术来进行有效的探索。我们提出了一个自动化的工作流程,系统地管理模拟,从纳米团簇的生成到生产作业的提交,再到吸附能的预测。所提出的工作流程旨在筛选任意形状和大小的纳米团簇,但在本工作中,搜索仅限于双金属二十面体团簇,并以析氢反应为例进行了吸附。我们展示了在机器学习的帮助下对纳米簇结构的有效探索和吸附能的筛选。结果表明,d波段Hilbert-transform ?u的最大值与吸附能密切相关,可以作为纳米团簇水平上有用的筛选性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Efficient Machine-Learning-Aided Screening of Hydrogen Adsorption on Bimetallic Nanoclusters

Efficient Machine-Learning-Aided Screening of Hydrogen Adsorption on Bimetallic Nanoclusters

Nanoclusters add an additional dimension in which to look for promising catalyst candidates, since catalytic activity of materials often changes at the nanoscale. However, the large search space of relevant atomic sites exacerbates the challenge for computational screening methods and requires the development of new techniques for efficient exploration. We present an automated workflow that systematically manages simulations from the generation of nanoclusters through the submission of production jobs, to the prediction of adsorption energies. The presented workflow was designed to screen nanoclusters of arbitrary shapes and size, but in this work the search was restricted to bimetallic icosahedral clusters and the adsorption was exemplified on the hydrogen evolution reaction. We demonstrate the efficient exploration of nanocluster configurations and screening of adsorption energies with the aid of machine learning. The results show that the maximum of the d-band Hilbert-transform ?u is correlated strongly with adsorption energies and could be a useful screening property accessible at the nanocluster level.

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来源期刊
ACS Combinatorial Science
ACS Combinatorial Science CHEMISTRY, APPLIED-CHEMISTRY, MEDICINAL
自引率
0.00%
发文量
0
审稿时长
1 months
期刊介绍: The Journal of Combinatorial Chemistry has been relaunched as ACS Combinatorial Science under the leadership of new Editor-in-Chief M.G. Finn of The Scripps Research Institute. The journal features an expanded scope and will build upon the legacy of the Journal of Combinatorial Chemistry, a highly cited leader in the field.
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