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运用机器学习关联硝酸盐吸附与FeCoNiCuZn高熵合金催化剂的局部环境

Correlating Nitrate Adsorption with the Local Environments of FeCoNiCuZn High-Entropy Alloy Catalysts Using Machine Learning.

作者信息

He Xiang

机构信息

Department of Mechanical and Civil Engineering, Florida Institute of Technology, Melbourne, Florida 32901, United States.

出版信息

Langmuir. 2024 Jul 13. doi: 10.1021/acs.langmuir.4c01071.

Abstract

The electrocatalytic nitrate reduction to ammonia holds significant values for water remediations and energy applications, which quests for the development of highly effective catalysts with considerable stability and selectivity. Recently, high-entropy alloys (HEAs) are attracting growing attention for electrocatalytic processes. Nonetheless, studies of HEA-based nitrate reduction to ammonia are still at the early stage, and it remains unclear how the HEA compositions affect the adsorption and activation of the reaction intermediates. Herein, high-throughput density functional theory (DFT) calculations were integrated with machine learning to investigate the dependence of nitrate adsorption on the FeCoNiCuZn HEA structures. In particular, a total of 1268 different structures were sampled and constructed from the multidimensional configuration space, followed by the DFT calculations to investigate the Gibbs free energy of nitrate adsorption (i.e., Δ) on different surface microstructures. Four regression models were successfully developed, which can accurately predict Δ using the HEA structures as the input features. Through the analysis of the feature importance, it was found that the active sites are crucial for nitrate adsorption; meanwhile, the local environments also play a considerable role. The dependence of the Δ and adsorption geometries on the HEA compositions demonstrates that the compositional modulation of the HEA catalysts could be a promising avenue for facile adsorption and activation of reaction intermediates. Overall, this work will contribute to the probabilistic optimization of the HEA microstructures for enhanced electrochemical nitrate reduction.

摘要

电催化硝酸盐还原为氨在水修复和能源应用方面具有重要价值,这就需要开发具有相当稳定性和选择性的高效催化剂。近年来,高熵合金(HEAs)在电催化过程中越来越受到关注。然而,基于高熵合金的硝酸盐还原为氨的研究仍处于早期阶段,目前尚不清楚高熵合金的组成如何影响反应中间体的吸附和活化。在此,高通量密度泛函理论(DFT)计算与机器学习相结合,研究了硝酸盐吸附对FeCoNiCuZn高熵合金结构的依赖性。具体而言,从多维构型空间中采样并构建了总共1268种不同的结构,然后通过DFT计算研究硝酸盐在不同表面微结构上吸附的吉布斯自由能(即Δ)。成功开发了四个回归模型,这些模型可以使用高熵合金结构作为输入特征准确预测Δ。通过对特征重要性的分析,发现活性位点对硝酸盐吸附至关重要;同时,局部环境也起着相当大的作用。Δ和吸附几何结构对高熵合金组成的依赖性表明,高熵合金催化剂的组成调制可能是一种简便地吸附和活化反应中间体的有前途的途径。总体而言,这项工作将有助于对高熵合金微结构进行概率优化,以增强电化学硝酸盐还原。

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