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Semi-local machine-learned kinetic energy density functional with third-order gradients of electron density

机译:半局部机器学习的动能密度函数具有三阶梯度的电子密度

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摘要

A semi-local kinetic energy density functional (KEDF) was constructed based on machine learning (ML). The present scheme adopts electron densities and their gradients up to third-order as the explanatory variables for ML and the Kohn-Sham (KS) kinetic energy density as the response variable in atoms and molecules. Numerical assessments of the present scheme were performed in atomic and molecular systems, including first-and second-period elements. The results of 37 conventional KEDFs with explicit formulae were also compared with those of the ML KEDF with an implicit formula. The inclusion of the higher order gradients reduces the deviation of the total kinetic energies from the KS calculations in a stepwise manner. Furthermore, our scheme with the third-order gradient resulted in the closest kinetic energies to the KS calculations out of the presented functionals. Published by AIP Publishing.
机译:基于机器学习(ML)构建半局部动能密度官能(KEDF)。 本发明的方案采用电子密度及其梯度最多为三阶,作为ML的解释变量和Kohn-Sham(KS)动能密度作为原子和分子中的响应变量。 本发明方案的数值评估在原子和分子系统中进行,包括第一和第二次元素。 还将37种常规KEDFS与明确公式的结果与具有隐性公式的ML KEDF的结果进行比较。 包含高阶梯度以逐步方式降低了总动能的偏差。 此外,我们具有三阶梯度的方案导致ks计算的最接近的动力学能量。 通过AIP发布发布。

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