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机器学习辅助研究掺铼氮共掺杂石墨烯作为氧电极反应潜在电催化剂

Machine Learning-Assisted Study of RENC-Doped Graphene as Potential Electrocatalysts for Oxygen Electrode Reactions.

作者信息

Fu Qiming, Xu Tao, He Chenggong, Wang Daomiao, Liu Meiling, Liu Chao

机构信息

School of Materials Science and Engineering, Faculty of Materials Metallurgy and Chemistry, Jiangxi University of Science and Technology, Ganzhou 341000, People's Republic of China.

出版信息

Langmuir. 2024 May 21;40(20):10726-10736. doi: 10.1021/acs.langmuir.4c00803. Epub 2024 May 8.

Abstract

In the application of renewable energy, the oxidation-reduction reaction (ORR) and oxygen evolution reaction (OER) are two crucial reactions. Single-atom catalysts (SACs) based on metal-doped graphene have been widely employed due to their high activity and high atom utilization efficiency. However, the catalytic activity is significantly influenced by different metals and local coordination, making it challenging to efficiently screen through either experimental or density functional theory (DFT) calculations. To address this issue, this study employed a combination of DFT calculations and machine learning (DFT-ML) to investigate rare earth-modified carbon-based (RENC) electrocatalysts. Based on computational data from 75 catalysts, we trained two ML models to capture the underlying patterns of physical properties and overpotential. Subsequently, the candidate catalysts were screened, leading to the discovery of four ORR catalysts, nine OER catalysts, and five bifunctional electrocatalysts, all of which were thoroughly validated for their stability. Lastly, by integrating the ML models with the SHAP analysis framework, we revealed the influence of atomic radius, Pauling electronegativity, and other features on the catalytic activity. Additionally, we analyzed the physicochemical properties of potential catalysts through DFT calculations. The revolutionary DFT-ML approach provides a crucial driving force for the design and synthesis of potential catalysts in subsequent studies.

摘要

在可再生能源的应用中,氧化还原反应(ORR)和析氧反应(OER)是两个关键反应。基于金属掺杂石墨烯的单原子催化剂(SACs)因其高活性和高原子利用效率而被广泛应用。然而,催化活性受到不同金属和局部配位的显著影响,这使得通过实验或密度泛函理论(DFT)计算进行有效筛选具有挑战性。为了解决这个问题,本研究采用DFT计算和机器学习(DFT-ML)相结合的方法来研究稀土改性碳基(RENC)电催化剂。基于75种催化剂的计算数据,我们训练了两个ML模型来捕捉物理性质和过电位的潜在模式。随后,对候选催化剂进行了筛选,发现了4种ORR催化剂、9种OER催化剂和5种双功能电催化剂,所有这些催化剂的稳定性都经过了充分验证。最后,通过将ML模型与SHAP分析框架相结合,我们揭示了原子半径、鲍林电负性等特征对催化活性的影响。此外,我们通过DFT计算分析了潜在催化剂的物理化学性质。这种革命性的DFT-ML方法为后续研究中潜在催化剂的设计和合成提供了关键驱动力。

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