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Active learning of ternary alloy structures and energies

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摘要 Machine learning models with uncertainty quantification have recently emerged as attractive tools to accelerate the navigation of catalyst design spaces in a data-efficient manner.Here,we combine active learning with a dropout graph convolutional network(dGCN)as a surrogate model to explore the complex materials space of high-entropy alloys(HEAs).We train the dGCN on the formation energies of disordered binary alloy structures in the Pd-Pt-Sn ternary alloy system and improve predictions on ternary structures by performing reduced optimization of the formation free energy,the target property that determines HEA stability,over ensembles of ternary structures constructed based on two coordinate systems:(a)a physics-informed ternary composition space,and(b)data-driven coordinates discovered by the Diffusion Maps manifold learning scheme.Both reduced optimization techniques improve predictions of the formation free energy in the ternary alloy space with a significantly reduced number of DFT calculations compared to a high-fidelity model.The physicsbased scheme converges to the target property in a manner akin to a depth-first strategy,whereas the data-driven scheme appearsmore akin to a breadth-first approach.Both sampling schemes,coupled with our acquisition function,successfully exploit a database of DFT-calculated binary alloy structures and energies,augmented with a relatively small number of ternary alloy calculations,to identify stable ternary HEA compositions and structures.This generalized framework can be extended to incorporate more complex bulk and surface structural motifs,and the results demonstrate that significant dimensionality reduction is possible in thermodynamic sampling problems when suitable active learning schemes are employed.
出处 《npj Computational Materials》 CSCD 2024年第1期2049-2059,共11页 计算材料学(英文)
基金 the United States Department of Energy through the Office of Science,Office of Basic Energy Sciences(BES),Chemical,Biological,and Geosciences Division,Data Science Initiative,grant DE-SC0020381。
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