基于冻结迁移学习的材料原子间势的微调基础模型

IF 9.4 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Mariia Radova, Wojciech G. Stark, Connor S. Allen, Reinhard J. Maurer, Albert P. Bartók
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引用次数: 0

摘要

机器学习原子间势通过在训练数据涵盖的范围内提供准确和可扩展的预测,正在彻底改变原子材料模拟。然而,生成准确且健壮的训练数据集仍然是一个挑战,通常需要数千次第一性原理计算才能达到高精度。基础模型已经开始出现,其目标是在广泛的材料中创造普遍适用的潜力。虽然基础模型可以是健壮的和可转移的,但它们还不能达到预测反应障碍、相变和材料稳定性所需的准确性。这项工作表明,当使用部分冻结权重和偏差的迁移学习进行微调时,基础模型电位可以达到化学精度。对于两个具有挑战性的数据集,即表面反应化学和第三系合金的稳定性和弹性特性,我们表明,使用10-20%的数据(数百个数据点)进行冻结迁移学习可以达到与从头开始训练的模型(数千个数据点)相似的精度。此外,我们表明,使用迁移学习势作为基础真值可以建立一个同样准确但显着更有效的代理模型。综上所述,我们提出了一个机器学习潜力的模拟工作流程,提高了数据效率和计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Fine-tuning foundation models of materials interatomic potentials with frozen transfer learning

Fine-tuning foundation models of materials interatomic potentials with frozen transfer learning

Machine-learned interatomic potentials are revolutionising atomistic materials simulations by providing accurate and scalable predictions within the scope covered by the training data. However, generation of an accurate and robust training data set remains a challenge, often requiring thousands of first-principles calculations to achieve high accuracy. Foundation models have started to emerge with the ambition to create universally applicable potentials across a wide range of materials. While foundation models can be robust and transferable, they do not yet achieve the accuracy required to predict reaction barriers, phase transitions, and material stability. This work demonstrates that foundation model potentials can reach chemical accuracy when fine-tuned using transfer learning with partially frozen weights and biases. For two challenging datasets on reactive chemistry at surfaces and stability and elastic properties of tertiary alloys, we show that frozen transfer learning with 10–20% of the data (hundreds of datapoints) achieves similar accuracies to models trained from scratch (on thousands of datapoints). Moreover, we show that an equally accurate, but significantly more efficient surrogate model can be built using the transfer learned potential as the ground truth. In combination, we present a simulation workflow for machine learning potentials that improves data efficiency and computational efficiency.

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来源期刊
npj Computational Materials
npj Computational Materials Mathematics-Modeling and Simulation
CiteScore
15.30
自引率
5.20%
发文量
229
审稿时长
6 weeks
期刊介绍: npj Computational Materials is a high-quality open access journal from Nature Research that publishes research papers applying computational approaches for the design of new materials and enhancing our understanding of existing ones. The journal also welcomes papers on new computational techniques and the refinement of current approaches that support these aims, as well as experimental papers that complement computational findings. Some key features of npj Computational Materials include a 2-year impact factor of 12.241 (2021), article downloads of 1,138,590 (2021), and a fast turnaround time of 11 days from submission to the first editorial decision. The journal is indexed in various databases and services, including Chemical Abstracts Service (ACS), Astrophysics Data System (ADS), Current Contents/Physical, Chemical and Earth Sciences, Journal Citation Reports/Science Edition, SCOPUS, EI Compendex, INSPEC, Google Scholar, SCImago, DOAJ, CNKI, and Science Citation Index Expanded (SCIE), among others.
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