Learning local and semi-local density functionals from exact exchange-correlation potentials and energies

Bikash Kanungo, Jeffrey Hatch, Paul M. Zimmerman, Vikram Gavini
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Abstract

Finding accurate exchange-correlation (XC) functionals remains the defining challenge in density functional theory (DFT). Despite 40 years of active development, the desired chemical accuracy is still elusive with existing functionals. We present a data-driven pathway to learn the XC functionals by utilizing the exact density, XC energy, and XC potential. While the exact densities are obtained from accurate configuration interaction (CI), the exact XC energies and XC potentials are obtained via inverse DFT calculations on the CI densities. We demonstrate how simple neural network (NN) based local density approximation (LDA) and generalized gradient approximation (GGA), trained on just five atoms and two molecules, provide remarkable improvement in total energies, densities, atomization energies, and barrier heights for hundreds of molecules outside the training set. Particularly, the NN-based GGA functional attains similar accuracy as the higher rung SCAN meta-GGA, highlighting the promise of using the XC potential in modeling XC functionals. We expect this approach to pave the way for systematic learning of increasingly accurate and sophisticated XC functionals.
从精确交换相关电势和能量中学习局部和半局部密度函数
寻找精确的交换相关(XC)函数仍然是密度泛函理论(DFT)的决定性挑战。尽管经过 40 年的积极发展,现有函数仍然无法达到理想的化学精度。我们提出了一种数据驱动路径,通过利用精确密度、XC 能量和 XC 势来学习 XC 函数。精确密度是通过精确的构型相互作用(CI)获得的,而精确的 XC 能量和 XC 势则是通过对 CI 密度进行反 DFT 计算获得的。我们展示了基于简单神经网络(NN)的局部密度逼近(LDA)和广义梯度逼近(GGA)是如何通过对五个原子和两个分子的训练,显著改善了训练集之外数百个分子的总能、密度、原子化能和势垒高度。特别是,基于 NN 的 GGA 函数获得了与更高阶 SCAN 元 GGA 相似的精确度,突出了在 XC 函数建模中使用 XC 势的前景。我们期待这种方法能为系统学习越来越精确和复杂的 XC 函数铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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