Accelerating Phonon Thermal Conductivity Prediction by an Order of Magnitude Through Machine Learning-Assisted Extraction of Anharmonic Force Constants
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引用次数: 0
Abstract
The calculation of material phonon thermal conductivity from density
functional theory calculations requires computationally expensive evaluation of
anharmonic interatomic force constants and has remained a computational
bottleneck in the high-throughput discovery of materials. In this work, we
present a machine learning-assisted approach for the extraction of anharmonic
force constants through local learning of the potential energy surface. We
demonstrate our approach on a diverse collection of 220 ternary materials for
which the total computational time for anharmonic force constants evaluation is
reduced by more than an order of magnitude from 480,000 cpu-hours to less than
12,000 cpu-hours while preserving the thermal conductivity prediction accuracy
to within 10%. Our approach removes a major hurdle in computational thermal
conductivity evaluation and will pave the way forward for the high-throughput
discovery of materials.
从密度函数理论计算中计算材料声子热导率需要对谐波原子间力常量进行计算昂贵的评估,这一直是高通量材料发现过程中的计算瓶颈。在这项工作中,我们提出了一种机器学习辅助方法,通过对势能面的局部学习来提取谐波力常数。我们在 220 种不同的三元材料上演示了我们的方法,评估非谐波力常数的总计算时间从 480,000 cpu 小时减少到不到 12,000 cpu 小时,减少了一个数量级以上,同时保持了 10%以内的热导率预测精度。我们的方法消除了计算热导评估中的一大障碍,将为高通量材料发现铺平道路。