An active learning workflow for predicting hydrogen atom adsorption energies on binary oxides based on local electronic transfer features

IF 10.7 1区 工程技术 Q1 CHEMISTRY, PHYSICAL Green Energy & Environment Pub Date : 2024-06-28 DOI:10.1016/j.gee.2024.06.007
Wenhao Jing, Zihao Jiao, Mengmeng Song, Ya Liu, Liejin Guo
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Abstract

Machine learning combined with density functional theory (DFT) enables rapid exploration of catalyst descriptors space such as adsorption energy, facilitating rapid and effective catalyst screening. However, there is still a lack of models for predicting adsorption energies on oxides, due to the complexity of elemental species and the ambiguous coordination environment. This work proposes an active learning workflow (LeNN) founded on local electronic transfer features () and the principle of coordinate rotation invariance. By accurately characterizing the electron transfer to adsorption site atoms and their surrounding geometric structures, LeNN mitigates abrupt feature changes due to different element types and clarifies coordination environments. As a result, it enables the prediction of ∗H adsorption energy on binary oxide surfaces with a mean absolute error (MAE) below 0.18 eV. Moreover, we incorporate local coverage () and leverage neutral network ensemble to establish an active learning workflow, attaining a prediction MAE below 0.2 eV for 5419 multi-∗H adsorption structures. These findings validate the universality and capability of the proposed features in predicting ∗H adsorption energy on binary oxide surfaces.

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基于局部电子转移特征预测二元氧化物上氢原子吸附能的主动学习工作流程
机器学习与密度泛函理论(DFT)相结合,可以快速探索催化剂描述符空间(如吸附能),从而促进催化剂的快速有效筛选。然而,由于元素种类的复杂性和配位环境的模糊性,目前仍然缺乏预测氧化物吸附能的模型。本研究提出了一种基于局部电子转移特征()和坐标旋转不变性原理的主动学习工作流(LeNN)。通过准确描述电子传递到吸附位点原子及其周围几何结构的特征,LeNN 可减轻因元素类型不同而导致的特征突变,并澄清配位环境。因此,它能预测二元氧化物表面的 ∗H 吸附能,平均绝对误差 (MAE) 低于 0.18 eV。此外,我们还纳入了局部覆盖(),并利用中性网络集合建立了主动学习工作流程,使 5419 种多∗H 吸附结构的预测 MAE 低于 0.2 eV。这些发现验证了所提出的特征在预测二元氧化物表面∗H 吸附能方面的通用性和能力。
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来源期刊
Green Energy & Environment
Green Energy & Environment Energy-Renewable Energy, Sustainability and the Environment
CiteScore
16.80
自引率
3.80%
发文量
332
审稿时长
12 days
期刊介绍: Green Energy & Environment (GEE) is an internationally recognized journal that undergoes a rigorous peer-review process. It focuses on interdisciplinary research related to green energy and the environment, covering a wide range of topics including biofuel and bioenergy, energy storage and networks, catalysis for sustainable processes, and materials for energy and the environment. GEE has a broad scope and encourages the submission of original and innovative research in both fundamental and engineering fields. Additionally, GEE serves as a platform for discussions, summaries, reviews, and previews of the impact of green energy on the eco-environment.
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