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Simulating Segregation in a Ternary Cu–Pd–Au Alloy with Density Functional Theory, Machine Learning, and Monte Carlo Simulations

Yilin Yang, Zhitao Guo, Andrew J. Gellman, John R. Kitchin

2022The Journal of Physical Chemistry C32 citationsDOI

Abstract

Simulation of the segregation profile of multicomponent alloys is important to investigate the catalytic properties of alloy catalysts. Density functional theory (DFT) is too expensive to use directly to evaluate the potential energies of the slab configurations during the simulations. In this work, we build a neural network (NN) based on 5278 DFT calculations as a surrogate model to evaluate the potential energies of the fcc(111) slabs for a ternary Cu–Pd–Au alloy. The trained NN is capable of predicting the Cu–Pd–Au potential energies across the whole ternary space with high accuracy. Combining the NN with Monte Carlo simulation, we obtained the segregation profile of Cu–Pd–Au at 600 K across the bulk composition space. The simulation results are qualitatively consistent with the experimental data for PdAu and CuAu, but they are incorrect along the PdCu line. Further DFT calculations show that the perfect fcc(111) slab is not capable of capturing the CuPd segregation behavior on undercoordinated surfaces under the realistic conditions.

Topics & Concepts

Ternary operationDensity functional theoryMonte Carlo methodMaterials scienceSlabAlloyWork (physics)Space (punctuation)Statistical physicsThermodynamicsChemical physicsComputational chemistryChemistryPhysicsComputer scienceMetallurgyMathematicsProgramming languageGeophysicsOperating systemStatisticsMachine Learning in Materials ScienceCatalytic Processes in Materials Sciencenanoparticles nucleation surface interactions
Simulating Segregation in a Ternary Cu–Pd–Au Alloy with Density Functional Theory, Machine Learning, and Monte Carlo Simulations | Litcius