论文标题
使用神经网络潜力研究的Au-Li二元系统的相位稳定性
Phase stability of Au-Li binary systems studied using neural network potential
论文作者
论文摘要
Au和Li的混杂性在辅助电池中表现出潜在的应用和电极材料的潜在应用。在这里,为了探索合金属性,我们基于密度功能理论(DFT)计算构建了Au-Li二元系统的神经网络电位(NNP)。为了加速NNP的构建,我们提出了一种有效且廉价的结构数据集生成方法。构造的NNP对晶格参数和声子属性的预测与DFT计算获得的预测非常吻合。我们还调查了Au $ _ {1-x} $ li $ _ {x} $的混合能量,并带有精细的构图网格,与DFT验证非常同意。我们发现存在各种组合物,并在凸壳上略高于结构,这可以解释先前研究中Au-Li稳定阶段的共识。此外,我们新发现Au $ _ {0.469} $ li $ _ {0.531} $是一个稳定的阶段,从未在其他地方报告。最后,我们检查了从相分离结构到完整混合阶段开始的合金过程。我们发现,当多个相邻的Au原子溶解到LI中时,整个Au/Li界面的合金从溶解区域开始。本文展示了NNP对可混杂的阶段的适用性,并提供了对合金机制的理解。
The miscibility of Au and Li exhibits a potential application as an adhesion layer and electrode material in secondary batteries. Here, to explore alloying properties, we constructed a neural network potential (NNP) of Au-Li binary systems based on density functional theory (DFT) calculations. To accelerate construction of NNPs, we proposed an efficient and inexpensive method of structural dataset generation. The predictions by the constructed NNP on lattice parameters and phonon properties agree well with those obtained by DFT calculations. We also investigated the mixing energy of Au$_{1-x}$Li$_{x}$ with fine composition grids, showing excellent agreement with DFT verifications. We found the existence of various compositions with structures on and slightly above the convex hull, which can explain the lack of consensus on the Au-Li stable phases in previous studies. Moreover, we newly found Au$_{0.469}$Li$_{0.531}$ as a stable phase, which has never been reported elsewhere. Finally, we examined the alloying process starting from the phase separated structure to the complete mixing phase. We found that when multiple adjacent Au atoms dissolved into Li, the alloying of the entire Au/Li interface started from the dissolved region. This paper demonstrates the applicability of NNPs toward miscible phases and provides the understanding of the alloying mechanism.