从量子核到热电子态的有限温度材料模型

Nataliya Lopanitsyna, Chiheb Ben Mahmoud, M. Ceriotti
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引用次数: 13

摘要

原子模拟提供了对原子大小和长度尺度上的结构-性质关系的见解,这是对可以从实验中获得的宏观观察结果的补充。然而,由于需要在原子间势计算的准确性和实际热力学条件的模拟之间取得平衡,定量预测通常受到阻碍。机器学习技术可以有效地近似准确的电子结构计算的结果,因此可以与广泛的热力学采样相结合。我们以元素镍为原型材料,其合金具有从低温到接近熔点的应用,并使用它来演示如何将电子特性的机器学习模型和统计抽样方法相结合,从而以可承受的成本计算精确的有限温度特性。我们演示了在100到2500 K的温度范围内计算大量的体、界面和缺陷特性,并在需要时模拟了核量子涨落和电子熵的影响。我们在这里展示的框架可以很容易地推广到更复杂的合金和不同类别的材料。
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Finite-temperature materials modeling from the quantum nuclei to the hot electron regime
Atomistic simulations provide insights into structure-property relations on an atomic size and length scale, that are complementary to the macroscopic observables that can be obtained from experiments. Quantitative predictions, however, are usually hindered by the need to strike a balance between the accuracy of the calculation of the interatomic potential and the modelling of realistic thermodynamic conditions. Machine-learning techniques make it possible to efficiently approximate the outcome of accurate electronic-structure calculations, that can therefore be combined with extensive thermodynamic sampling. We take elemental nickel as a prototypical material, whose alloys have applications from cryogenic temperatures up to close to their melting point, and use it to demonstrate how a combination of machine-learning models of electronic properties and statistical sampling methods makes it possible to compute accurate finite-temperature properties at an affordable cost. We demonstrate the calculation of a broad array of bulk, interfacial and defect properties over a temperature range from 100 to 2500 K, modeling also, when needed, the impact of nuclear quantum fluctuations and electronic entropy. The framework we demonstrate here can be easily generalized to more complex alloys and different classes of materials.
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