Flexible machine-learning interatomic potential for simulating structural disordering behavior of Li7La3Zr2O12 solid electrolytes.

Kwangnam Kim, A. Dive, Andrew Grieder, N. Adelstein, Shinyoung Kang, L. Wan, B. Wood
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引用次数: 7

Abstract

Batteries based on solid-state electrolytes, including Li7La3Zr2O12 (LLZO), promise improved safety and increased energy density; however, atomic disorder at grain boundaries and phase boundaries can severely deteriorate their performance. Machine-learning (ML) interatomic potentials offer a uniquely compelling solution for simulating chemical processes, rare events, and phase transitions associated with these complex interfaces by mixing high scalability with quantum-level accuracy, provided that they can be trained to properly address atomic disorder. To this end, we report the construction and validation of an ML potential that is specifically designed to simulate crystalline, disordered, and amorphous LLZO systems across a wide range of conditions. The ML model is based on a neural network algorithm and is trained using ab initio data. Performance tests prove that the developed ML potential can predict accurate structural and vibrational characteristics, elastic properties, and Li diffusivity of LLZO comparable to ab initio simulations. As a demonstration of its applicability to larger systems, we show that the potential can correctly capture grain boundary effects on diffusivity, as well as the thermal transition behavior of LLZO. These examples show that the ML potential enables simulations of transitions between well-defined and disordered structures with quantum-level accuracy at speeds thousands of times faster than ab initio methods.
模拟Li7La3Zr2O12固体电解质结构无序行为的柔性机器学习原子间势。
基于固态电解质的电池,包括Li7La3Zr2O12 (LLZO),有望提高安全性和提高能量密度;然而,晶界和相界处的原子无序会严重影响其性能。机器学习(ML)原子间势通过将高可扩展性与量子级精度相结合,为模拟与这些复杂界面相关的化学过程、罕见事件和相变提供了独特的引人注目的解决方案,前提是它们可以被训练以适当地处理原子无序。为此,我们报告了ML电位的构建和验证,该电位专门用于模拟各种条件下的结晶,无序和非晶LLZO系统。机器学习模型基于神经网络算法,并使用从头算数据进行训练。性能测试证明,开发的ML势可以准确预测LLZO的结构和振动特性、弹性特性和Li扩散率,可与从头算模拟相媲美。为了证明它适用于更大的体系,我们表明势可以正确地捕获晶界对扩散率的影响,以及LLZO的热转变行为。这些例子表明,ML潜力能够以量子级精度模拟定义良好和无序结构之间的转换,速度比从头算方法快数千倍。
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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