过渡金属掺杂磷化钴析氢电催化剂的机器学习辅助设计

IF 5.5 2区 材料科学 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Sihan Fan, Yang Gao*, Min Wu, Xinjuan Liu*, Jianwei Li, Likun Pan* and Fuzhen Xuan*, 
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引用次数: 0

摘要

电化学水分解是一种很有前途的可持续制氢方法,但它面临着效率低、过电位高和不稳定性等挑战。高效电催化剂通过降低氢的活化能和优化氢的吉布斯自由能来提高析氢反应(HER)活性。磷化钴(CoP)因其广泛的活性位点和pH适用性而在各种纳米材料中脱颖而出;然而,高效过渡金属掺杂CoP电催化剂的合理筛选和预测仍然是一个挑战。在此,我们强调通过将机器学习(ML)与密度泛函理论相结合,合理设计掺杂过渡金属的CoP HER电催化剂。建立了29种不同过渡金属掺杂的CoP电催化剂模型,并采用广义梯度近似法计算了氢气吸附的Gibbs自由能(ΔGH*),作为ML的数据集。极端梯度增强模型的平均绝对误差为0.079 eV,预测ΔGH*的决定系数为0.931。影响ΔGH*的重要特征是掺杂位点、电子转移和第一电离能。这项工作为过渡金属掺杂CoP电催化剂的逆向设计和开发提供了有效的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning-Assisted Design of Transition-Metal-Doped Cobalt Phosphide Electrocatalysts for Hydrogen Evolution

Machine Learning-Assisted Design of Transition-Metal-Doped Cobalt Phosphide Electrocatalysts for Hydrogen Evolution

Electrochemical water splitting has emerged as a promising approach for sustainable hydrogen production, yet it faces several challenges such as low efficiency, high overpotential, and instability. Efficient electrocatalysts play a crucial role in enhancing hydrogen evolution reaction (HER) activity by lowering activation energy and optimizing Gibbs free energy for hydrogen in promising HER electrocatalysts. Cobalt phosphide (CoP) stands out among various nanomaterials due to its wide range of active sites and pH applicability; however, the rational screening and prediction of highly efficient transition metal doping CoP electrocatalysts is still a challenge. Herein, we highlight the rational design of transition-metal-doped CoP HER electrocatalysts by integrating machine learning (ML) with density functional theory. A model was developed for transition-metal-doped CoP electrocatalysts with 29 different transition metals, and the Gibbs free energy of hydrogen adsorption (ΔGH*) was calculated using the generalized gradient approximation method, which served as the data set for ML. Extreme gradient boosting model shows a mean absolute error of 0.079 eV and a higher coefficient of determination of 0.931 for predicting ΔGH*. The significant features impacting ΔGH* are doping sites, electronic transfer, and first ionization energy. This work provides effective insights into the reverse design and development of transition-metal-doped CoP electrocatalysts.

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来源期刊
CiteScore
8.30
自引率
3.40%
发文量
1601
期刊介绍: ACS Applied Nano Materials is an interdisciplinary journal publishing original research covering all aspects of engineering, chemistry, physics and biology relevant to applications of nanomaterials. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important applications of nanomaterials.
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