Predicting activation energies for vacancy-mediated diffusion in alloys using a transition-state cluster expansion

Chenyang Li, T. Nilson, Liang Cao, Tim Mueller
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引用次数: 5

Abstract

Kinetic Monte Carlo models parameterized by first principles calculations are widely used to simulate atomic diffusion. However, accurately predicting the activation energies for diffusion in substitutional alloys remains challenging due to the wide variety of local environments that may exist around the diffusing atom. We address this challenge using a cluster expansion model that explicitly includes a sublattice of sites representing transition states and assess its accuracy in comparison with other models, such as the broken bond model and a model related to Marcus theory, by modeling vacancy-mediated diffusion in Pt-Ni nanoparticles. We find that the prediction error of the cluster expansion is similar to that of other models for small training sets, but with larger training sets the cluster expansion has a significantly lower prediction error than the other models with comparable execution speed. Of the simpler models, the model related to Marcus theory yields predictions of nanoparticle evolution that are most similar to those of the cluster expansion, and a weighted average of the two approaches has the lowest prediction error for activation energies across all training set sizes.
利用过渡态团簇膨胀预测合金中空位介导扩散的活化能
由第一性原理计算参数化的动力学蒙特卡罗模型被广泛用于模拟原子扩散。然而,由于扩散原子周围可能存在各种各样的局部环境,准确预测替代合金中扩散的活化能仍然具有挑战性。我们使用了一个簇扩展模型来解决这一挑战,该模型明确包含了一个代表过渡态的子格子,并通过模拟Pt-Ni纳米颗粒中空位介导的扩散,与其他模型(如断键模型和马库斯理论相关的模型)进行了比较,评估了其准确性。我们发现,对于较小的训练集,聚类扩展的预测误差与其他模型相似,但对于较大的训练集,在执行速度相当的情况下,聚类扩展的预测误差明显低于其他模型。在较简单的模型中,与马库斯理论相关的模型产生的纳米粒子演化预测与簇扩张预测最相似,两种方法的加权平均值在所有训练集大小上的活化能预测误差最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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