Strategies for fitting accurate machine-learned inter-atomic potentials for solid electrolytes

Juefan Wang, Abhishek A. Panchal, P. Canepa
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引用次数: 3

Abstract

Ion transport in materials is routinely probed through several experimental techniques, which introduce variability in reported ionic diffusivities and conductivities. The computational prediction of ionic diffusivities and conductivities helps in identifying good ionic conductors, and suitable solid electrolytes (SEs), thus establishing firm structure-property relationships. Machine-learned potentials are an attractive strategy to extend the capabilities of accurate ab initio molecular dynamics (AIMD) to longer simulations for larger systems, enabling the study of ion transport at lower temperatures. However, machine-learned potentials being in their infancy, critical assessments of their predicting capabilities are rare. Here, we identified the main factors controlling the quality of a machine-learning potential based on the moment tensor potential formulation, when applied to the properties of ion transport in ionic conductors, such as SEs. Our results underline the importance of high-quality and diverse training sets required to fit moment tensor potentials. We highlight the importance of considering intrinsic defects which may occur in SEs. We demonstrate the limitations posed by short-timescale and high-temperature AIMD simulations to predict the room-temperature properties of materials.
拟合固体电解质精确的机器学习原子间电位的策略
离子在材料中的传输通常通过几种实验技术来探测,这些实验技术引入了报道的离子扩散率和电导率的变化。离子扩散率和电导率的计算预测有助于确定良好的离子导体和合适的固体电解质,从而建立牢固的结构-性能关系。机器学习势是一种有吸引力的策略,可以将精确从头算分子动力学(AIMD)的能力扩展到更大系统的更长时间模拟,从而能够研究低温下的离子传输。然而,机器学习的潜力还处于起步阶段,对其预测能力的批判性评估很少。在这里,我们基于矩张量势公式确定了控制机器学习势质量的主要因素,当应用于离子导体(如se)中的离子输运特性时。我们的结果强调了拟合矩张量势所需的高质量和多样化训练集的重要性。我们强调考虑内在缺陷的重要性,这可能发生在SEs。我们证明了短时间尺度和高温AIMD模拟在预测材料室温特性方面的局限性。
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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CiteScore
7.40
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