Dattila Federico, Seemakurthi Ranga Rohit, Zhou Yecheng, López Núria
Institute of Chemical Research of Catalonia (ICIQ), The Barcelona Institute of Science and Technology (BIST), Av. Països Catalans 16, 43007 Tarragona, Spain.
School of Materials Science and Engineering, Sun Yat-sen University, Guangzhou 510006, P. R. China.
Chem Rev. 2022 Jun 22;122(12):11085-11130. doi: 10.1021/acs.chemrev.1c00690. Epub 2022 Apr 27.
Since the seminal works on the application of density functional theory and the computational hydrogen electrode to electrochemical CO reduction (eCOR) and hydrogen evolution (HER), the modeling of both reactions has quickly evolved for the last two decades. Formulation of thermodynamic and kinetic linear scaling relationships for key intermediates on crystalline materials have led to the definition of activity volcano plots, overpotential diagrams, and full exploitation of these theoretical outcomes at laboratory scale. However, recent studies hint at the role of morphological changes and short-lived intermediates in ruling the catalytic performance under operating conditions, further raising the bar for the modeling of electrocatalytic systems. Here, we highlight some novel methodological approaches employed to address eCOR and HER reactions. Moving from the atomic scale to the bulk electrolyte, we first show how and machine learning methodologies can partially reproduce surface reconstruction under operation, thus identifying active sites and reaction mechanisms if coupled with microkinetic modeling. Later, we introduce the potential of density functional theory and machine learning to interpret data from spectroelectrochemical techniques, such as Raman spectroscopy and extended X-ray absorption fine structure characterization. Next, we review the role of electrolyte and mass transport effects. Finally, we suggest further challenges for computational modeling in the near future as well as our perspective on the directions to follow.
自从关于密度泛函理论和计算氢电极在电化学CO还原(eCOR)和析氢反应(HER)中应用的开创性工作以来,在过去二十年里,这两种反应的建模迅速发展。针对晶体材料上关键中间体的热力学和动力学线性标度关系的建立,导致了活性火山图、过电位图的定义,并在实验室规模上充分利用了这些理论成果。然而,最近的研究暗示了形态变化和短寿命中间体在操作条件下对催化性能的影响,这进一步提高了电催化系统建模的难度。在这里,我们重点介绍一些用于处理eCOR和HER反应的新颖方法。从原子尺度到本体电解质,我们首先展示如何以及机器学习方法能够在操作过程中部分重现表面重构,从而在与微观动力学建模相结合时识别活性位点和反应机制。随后,我们介绍密度泛函理论和机器学习在解释来自光谱电化学技术(如拉曼光谱和扩展X射线吸收精细结构表征)数据方面的潜力。接下来,我们回顾电解质和传质效应的作用。最后,我们提出了计算建模在不久的将来面临的进一步挑战以及我们对未来发展方向的展望。