Do we really need machine learning interatomic potentials for modeling amorphous metal oxides? Case study on amorphous alumina by recycling an existing ab initio database

IF 1.9 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Modelling and Simulation in Materials Science and Engineering Pub Date : 2024-04-16 DOI:10.1088/1361-651x/ad39ff
Simon Gramatte, Vladyslav Turlo, Olivier Politano
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Abstract

In this study, we critically evaluate the performance of various interatomic potentials/force fields against a benchmark ab initio database for bulk amorphous alumina. The interatomic potentials tested in this work include all major fixed charge and variable charge models developed to date for alumina. Additionally, we introduce a novel machine learning interatomic potential constructed using the NequIP framework based on graph neural networks. Our findings reveal that the fixed-charge potential developed by Matsui and coworkers offers the most optimal balance between computational efficiency and agreement with ab initio data for stoichiometric alumina. Such balance cannot be provided by machine learning potentials when comparing performance with Matsui potential on the same computing infrastructure using a single Graphical Processing Unit. For non-stoichiometric alumina, the variable charge potentials, in particular ReaxFF, exhibit an impressive concordance with density functional theory calculations. However, our NequIP potentials trained on a small fraction of the ab initio database easily surpass ReaxFF in terms of both accuracy and computational performance. This is achieved without large overhead in terms of potential fitting and fine-tuning, often associated with the classical potential development process as well as training of standard deep neural network potentials, thus advocating for the use of data-efficient machine learning potentials like NequIP for complex cases of non-stoichiometric amorphous oxides.
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我们真的需要机器学习原子间势来模拟非晶态金属氧化物吗?通过再利用现有的 ab initio 数据库对无定形氧化铝进行案例研究
在本研究中,我们根据针对块状无定形氧化铝的基准 ab initio 数据库,对各种原子间势/力场的性能进行了严格评估。这项工作中测试的原子间势包括迄今为止针对氧化铝开发的所有主要固定电荷和可变电荷模型。此外,我们还采用基于图神经网络的 NequIP 框架构建了一种新型机器学习原子间势。我们的研究结果表明,Matsui 及其同事开发的定电荷势在计算效率和与原子序数氧化铝的原子序数数据的一致性之间实现了最佳平衡。在使用单个图形处理单元的相同计算基础设施上比较机器学习势能与松井势能的性能时,机器学习势能无法提供这种平衡。对于非化学计量氧化铝,可变电荷势,尤其是 ReaxFF,与密度泛函理论计算的一致性令人印象深刻。然而,我们在一小部分原子序数数据库上训练的 NequIP 电位在准确性和计算性能方面都轻松超越了 ReaxFF。在实现这一目标的过程中,无需进行大量的电位拟合和微调(通常与经典的电位开发过程以及标准深度神经网络电位的训练有关),因此主张在非化学计量无定形氧化物的复杂情况下使用像 NequIP 这样数据高效的机器学习电位。
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
96
审稿时长
1.7 months
期刊介绍: Serving the multidisciplinary materials community, the journal aims to publish new research work that advances the understanding and prediction of material behaviour at scales from atomistic to macroscopic through modelling and simulation. Subject coverage: Modelling and/or simulation across materials science that emphasizes fundamental materials issues advancing the understanding and prediction of material behaviour. Interdisciplinary research that tackles challenging and complex materials problems where the governing phenomena may span different scales of materials behaviour, with an emphasis on the development of quantitative approaches to explain and predict experimental observations. Material processing that advances the fundamental materials science and engineering underpinning the connection between processing and properties. Covering all classes of materials, and mechanical, microstructural, electronic, chemical, biological, and optical properties.
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