用通用机器学习原子间势探索分子晶体的弹性特性

IF 7.6 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Anastasiia Kholtobina, Ivor Lončarić
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引用次数: 0

摘要

我们对现有的和新训练的通用机器学习原子间势进行基准测试,以模拟分子晶体,特别是它们的弹性特性。我们发现,在SPICE数据集上训练的电位提供了对分子晶体弹性特性的合理预测,与使用基于密度泛函理论的方法所做的预测一样好。然而,预测的不确定性和与实验值的差异相对较高(杨氏模量大于5 GPa)。我们对分子晶体的弹性特性进行了高通量研究。我们发现一些分子晶体表现出负的线性可压缩性,并利用密度泛函理论验证了我们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Exploring elastic properties of molecular crystals with universal machine learning interatomic potentials

Exploring elastic properties of molecular crystals with universal machine learning interatomic potentials
We benchmarked existing and newly trained universal machine learning interatomic potentials for modeling molecular crystals, particularly their elastic properties. We found that potentials trained on the SPICE dataset provide reasonable predictions of the elastic properties of molecular crystals that are as good as predictions made using density functional theory-based methods. Still, the uncertainty of predictions and difference to experimental values is relatively high (larger than 5 GPa for Young's modulus). We have performed a high-throughput study of the elastic properties of molecular crystals. We have found that some of the molecular crystals show negative linear compressibility and validated our results using density functional theory.
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来源期刊
Materials & Design
Materials & Design Engineering-Mechanical Engineering
CiteScore
14.30
自引率
7.10%
发文量
1028
审稿时长
85 days
期刊介绍: Materials and Design is a multi-disciplinary journal that publishes original research reports, review articles, and express communications. The journal focuses on studying the structure and properties of inorganic and organic materials, advancements in synthesis, processing, characterization, and testing, the design of materials and engineering systems, and their applications in technology. It aims to bring together various aspects of materials science, engineering, physics, and chemistry. The journal explores themes ranging from materials to design and aims to reveal the connections between natural and artificial materials, as well as experiment and modeling. Manuscripts submitted to Materials and Design should contain elements of discovery and surprise, as they often contribute new insights into the architecture and function of matter.
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