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Data-Driven Descriptor Engineering and Refined Scaling Relations for Predicting Transition Metal Oxide Reactivity

Wenbin Xu, Mie Andersen, Karsten Reuter

2020ACS Catalysis87 citationsDOI

Abstract

Computational screening of metal oxide catalysts is challenging due to their more localized and intricate electronic structure as compared to metal catalysts and the resulting lack of suitable activity descriptors to replace expensive density functional theory (DFT) calculations. By using a compressed sensing approach, we here identify descriptors in the form of algebraic expressions of surface-derived features for predicting adsorption enthalpies of oxygen evolution reaction (OER) intermediates at doped RuO<sub>2</sub> and IrO<sub>2</sub> electrocatalysts. Our descriptors significantly outperform previously highlighted single descriptors both in terms of accuracy and computational cost. Compared to standard scaling relations that employ the oxygen adsorption enthalpy as a unique reactivity descriptor, our analysis reveals that the consideration of features related to the local charge transfer leads to significantly improved refined scaling relations. These allow us to screen for improved OER electrocatalysts with an uncertainty in the theoretical overpotential similar to the expected intrinsic DFT error of 0.2 V.

Topics & Concepts

OverpotentialScalingDensity functional theoryReactivity (psychology)OxideCatalysisTransition metalChemistryMaterials scienceComputational chemistryThermodynamicsElectrochemistryPhysical chemistryMathematicsPhysicsOrganic chemistryAlternative medicineMedicineGeometryElectrodePathologyElectrocatalysts for Energy ConversionMachine Learning in Materials ScienceElectrochemical Analysis and Applications
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