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通过图神经网络和密度泛函理论计算,基于数据驱动发现用于析氢反应的石墨烯基双原子催化剂。

Data-Driven Discovery of Graphene-Based Dual-Atom Catalysts for Hydrogen Evolution Reaction with Graph Neural Network and DFT Calculations.

作者信息

Boonpalit Kajjana, Wongnongwa Yutthana, Prommin Chanatkran, Nutanong Sarana, Namuangruk Supawadee

机构信息

School of Information Science and Technology, Vidyasirimedhi Institute of Science and Technology (VISTEC), Rayong21210, Thailand.

NSTDA Supercomputer Center (ThaiSC), National Electronics and Computer Technology Center (NECTEC), National Science and Technology Development Agency (NSTDA), Khlong Luang, Pathum Thani12120, Thailand.

出版信息

ACS Appl Mater Interfaces. 2023 Mar 15;15(10):12936-12945. doi: 10.1021/acsami.2c19391. Epub 2023 Feb 6.

Abstract

The flexible tuning ability of dual-atom catalysts (DACs) makes them an ideal system for a wide range of electrochemical applications. However, the large design space of DACs and the complexity in the binding motif of electrochemical intermediates hinder the efficient determination of DAC combinations for desirable catalytic properties. A crystal graph convolutional neural network (CGCNN) was adopted for DACs to accelerate the high-throughput screening of hydrogen evolution reaction (HER) catalysts. From a pool of 435 dual-atom combinations in N-doped graphene (NGr), we screened out two high-performance HER catalysts (AuCo@NGr and NiNi@NGr) with excellent HER, electronic conductivity, and stability using the combination of CGCNN and density functional theory (DFT). Furthermore, comprehensive DFT studies were conducted on these two catalysts to confirm their outstanding reaction kinetics and to understand the cooperative effect between the metal pair for HER. To obtain ideal hydrogen binding in AuCo, the inert Au weakens the strong hydrogen binding of Co, while for NiNi, the two weakly binding Ni cooperate. The present protocol was able to select the two catalysts with different physical origins for HER and can be applied to other DAC catalysts, which should hasten catalyst discovery.

摘要

双原子催化剂(DACs)的灵活调谐能力使其成为广泛电化学应用的理想体系。然而,DACs庞大的设计空间以及电化学中间体结合模式的复杂性阻碍了高效确定具有理想催化性能的DAC组合。采用晶体图卷积神经网络(CGCNN)对DACs进行加速析氢反应(HER)催化剂的高通量筛选。从氮掺杂石墨烯(NGr)中的435种双原子组合中,我们结合CGCNN和密度泛函理论(DFT)筛选出了两种具有优异析氢性能、电子导电性和稳定性的高性能HER催化剂(AuCo@NGr和NiNi@NGr)。此外,对这两种催化剂进行了全面的DFT研究,以确认其出色的反应动力学,并了解金属对析氢反应的协同效应。为了在AuCo中获得理想的氢结合,惰性的Au减弱了Co的强氢结合,而对于NiNi,两个弱结合的Ni相互协作。本方法能够筛选出两种具有不同物理起源的析氢反应催化剂,并可应用于其他DAC催化剂,这将加速催化剂的发现。

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