Reactivity screening of single atoms on modified graphene surface -- From formation and scaling relations to catalytic activity
Aleksandar Z. Jovanovi\'c (1), Slavko V. Mentus (1, 2), Natalia V., Skorodumova (3, 4), Igor A. Pa\v{s}ti (1, 3) ((1) University of, Belgrade - Faculty of Physical Chemistry, Belgrade, Serbia, (2) Serbian, Academy of Sciences, Arts, Belgrade, Serbia, (3) Department of Materials

TL;DR
This study uses DFT calculations to analyze single atom catalysts on modified graphene supports, revealing stability conditions, reactivity patterns, and scaling relations crucial for designing efficient electrocatalysts.
Contribution
It provides a comprehensive computational analysis of SAC stability and reactivity on various graphene supports, highlighting the importance of vacancy sites and electronic structure considerations.
Findings
Graphene with a single vacancy enables stable SAC formation.
Scaling relations between adsorption energies are confirmed, with some exceptions.
Certain SACs are stable under hydrogen evolution in acidic conditions.
Abstract
Single atom catalysts (SACs) present the ultimate level of catalyst utilization, which puts them in the focus of current research. For this reason, their understanding is crucial for the development of new efficient catalytic systems. Using Density Functional Theory calculations, model SACs consisted of nine metals (Ni, Cu, Ru, Rh, Pd, Ag, Ir, Pt and Au) on four different supports (pristine graphene, N- and B-doped graphene and graphene with single vacancy) were analyzed. Among them, only graphene with a single vacancy enables the formation of SACs, which are stable in terms of aggregation and dissolution under harsh conditions of electrocatalysis. Reactivity of models SACs was probed using atomic (hydrogen and A = C, N, O and S) and molecular adsorbates (AHx, x = 1, 2, 3 or 4, depending on A), giving nearly 600 different systems included in this study. Scaling relations between…
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