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Stepwise Evolution of Photocatalytic Spinel-Structured (Co,Cr,Fe,Mn,Ni)3O4 High Entropy Oxides from First-Principles Calculations to Machine Learning

Chia‐Chun Lin, Chia-Wei Chang, Chao‐Cheng Kaun, Yen‐Hsun Su

2021Crystals19 citationsDOIOpen Access PDF

Abstract

High entropy oxides (HEOx) are novel materials, which increase the potential application in the fields of energy and catalysis. However, a series of HEOx is too novel to evaluate the synthesis properties, including formation and fundamental properties. Combining first-principles calculations with machine learning (ML) techniques, we predict the lattice constants and formation energies of spinel-structured photocatalytic HEOx, (Co,Cr,Fe,Mn,Ni)3O4, for stoichiometric and non-stoichiometric structures. The effects of site occupation by different metal cations in the spinel structure are obtained through first-principles calculations and ML predictions. Our predicted results show that the lattice constants of these spinel-structured oxides are composition-dependent and that the formation energies of those oxides containing Cr atoms are low. The computing time and computing energy can be greatly economized through the tandem approach of first-principles calculations and ML.

Topics & Concepts

SpinelStoichiometryLattice constantPhotocatalysisCatalysisMaterials scienceEntropy (arrow of time)Physical chemistryThermodynamicsChemistryPhysicsMetallurgyOpticsBiochemistryDiffractionHigh Entropy Alloys StudiesHigh-Temperature Coating BehaviorsElectronic and Structural Properties of Oxides
Stepwise Evolution of Photocatalytic Spinel-Structured (Co,Cr,Fe,Mn,Ni)3O4 High Entropy Oxides from First-Principles Calculations to Machine Learning | Litcius