构建二氧化铀的 DFT+U 机器学习原子间势能

Elizabeth Stippell , Lorena Alzate-Vargas , Kashi N. Subedi , Roxanne M. Tutchton , Michael W.D. Cooper , Sergei Tretiak , Tammie Gibson , Richard A. Messerly
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引用次数: 0

摘要

尽管二氧化铀(UO2)是一种广泛使用的核燃料,但燃料性能模型广泛依赖于材料行为的经验相关性,利用二氧化铀的历史运行经验。机理模型考虑了对燃料性能过程(如裂变气体释放和蠕变)的原子论理解,能够更好地描述燃料在非原型条件下的行为,如在新反应堆概念或改进的二氧化铀燃料成分中。为此,分子动力学模拟是快速预测候选燃料物理性质的有力工具。然而,这些模拟的可靠性在很大程度上取决于原子力的准确性。传统上,这些作用力是通过经典力场(FF)或密度泛函理论(DFT)计算得出的。虽然密度泛函理论相对精确,但计算成本很高,尤其是对于锕系元素等 f 电子元素。相比之下,经典的 FF 计算效率高,但精确度较低。基于这些原因,我们报告了一种适用于二氧化铀的新的精确机器学习原子间势(MLIP),它能以类似于经典 FF 的低成本高保真地再现 DFT 力。我们采用了一种主动学习方法,该方法可自主增强 DFT 训练数据集,从而迭代完善 MLIP。为了进一步提高预测质量,我们利用迁移学习方法,根据精度更高的 DFT+U 数据重新训练 MLIP。我们将预测的物理特性(如热膨胀和弹性特性)与现有经典 FF 和 DFT/DFT+U 计算的物理特性以及实验数据(如有)进行比较,从而验证我们的 MLIP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building a DFT+U machine learning interatomic potential for uranium dioxide

Despite uranium dioxide (UO2) being a widely used nuclear fuel, fuel performance models rely extensively on empirical correlations of material behavior, leveraging the historical operating experience of UO2. Mechanistic models that consider an atomistic understanding of the processes governing fuel performance (such as fission gas release and creep) will enable a better description of fuel behavior under non-prototypical conditions such as in new reactor concepts or for modified UO2 fuel compositions. To this end, molecular dynamics simulation is a powerful tool for rapidly predicting physical properties of proposed fuel candidates. However, the reliability of these simulations depends largely on the accuracy of the atomic forces. Traditionally, these forces are computed using either a classical force field (FF) or density functional theory (DFT). While DFT is relatively accurate, the computational cost is burdensome, especially for f-electron elements, such as actinides. By contrast, classical FFs are computationally efficient but are less accurate. For these reasons, we report a new accurate machine learning interatomic potential (MLIP) for UO2 that provides high-fidelity reproduction of DFT forces at a similar low cost to classical FFs. We employ an active learning approach that autonomously augments the DFT training data set to iteratively refine the MLIP. To further improve the quality of our predictions, we utilize transfer learning to retrain our MLIP to higher-accuracy DFT+U data. We validate our MLIPs by comparing predicted physical properties (e.g., thermal expansion and elastic properties) with those from existing classical FFs and DFT/DFT+U calculations, as well as with experimental data when available.

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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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