高熵合金
材料科学
合金
曲面(拓扑)
熵(时间箭头)
组态熵
计算机科学
统计物理学
热力学
冶金
数学
物理
几何学
作者
Arslan Mazitov,Maximilian A. Springer,Nataliya Lopanitsyna,Guillaume Fraux,Sandip De,Michele Ceriotti
出处
期刊:JPhys materials
[IOP Publishing]
日期:2024-02-14
卷期号:7 (2): 025007-025007
被引量:10
标识
DOI:10.1088/2515-7639/ad2983
摘要
Abstract High-entropy alloys (HEAs), containing several metallic elements in near-equimolar proportions, have long been of interest for their unique mechanical properties. More recently, they have emerged as a promising platform for the development of novel heterogeneous catalysts, because of the large design space, and the synergistic effects between their components. In this work we use a machine-learning potential that can model simultaneously up to 25 transition metals to study the tendency of different elements to segregate at the surface of a HEA. We use as a starting point a potential that was previously developed using exclusively crystalline bulk phases, and show that, thanks to the physically-inspired functional form of the model, adding a much smaller number of defective configurations makes it capable of describing surface phenomena. We then present several computational studies of surface segregation, including both a simulation of a 25-element alloy, that provides a rough estimate of the relative surface propensity of the various elements, and targeted studies of CoCrFeMnNi and IrFeCoNiCu, which provide further validation of the model, and insights to guide the modeling and design of alloys for heterogeneous catalysis.
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