posted on 2021-05-26, 22:30authored byWissam A. Saidi, Waseem Shadid, Götz Veser
The
successful synthesis of high-entropy alloy (HEA) nanoparticles,
a long-sought goal in materials science, opens a new frontier in materials
science with applications across catalysis, structural alloys, and
energetic materials. Recently, a Co25Mo45Fe10Ni10Cu10 HEA made of earth-abundant
elements was shown to have a high catalytic activity for ammonia decomposition,
which rivals that of state-of-the-art, but prohibitively expensive,
ruthenium catalysts. Using a computational approach based on first-principles
calculations in conjunction with data analytics and machine learning,
we build a model to rapidly compute the adsorption energy of H, N,
and NHx (x = 1, 2, 3)
species on CoMoFeNiCu alloy surfaces with varied alloy compositions
and atomic arrangements. We show that the 25/45 Co/Mo ratio identified
experimentally as the most active composition for ammonia decomposition
increases the likelihood that the surface adsorbs nitrogen equivalently
to that of ruthenium while at the same time interacting moderately
strongly with intermediates. Our study underscores the importance
of computational modeling and machine learning to identify and optimize
HEA alloys across their near-infinite materials design space.