学习近似密度泛函中能量曲率与粒子数的关系

Alberto Fabrizio, Benjamin Meyer, C. Corminboeuf
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引用次数: 0

摘要

平均能量曲率作为粒子数的函数是一个分子特定量,它测量给定泛函与密度泛函理论(DFT)精确条件的偏差。由于在近似交换相关势中缺乏导数不连续,有关曲率的信息已被成功地用于恢复Kohn-Sham轨道特征值的物理意义,并开发了密度泛函近似的非经验调谐和校正方案。在这项工作中,我们提出了一个针对数千个有机小分子(QM7数据库)的中性和自由基阳离子状态之间的平均能量曲率的机器学习框架的构建。该模型的适用性在LC-ωPBE泛函的系统特定γ调谐背景下得到了证明,并针对运动方程(EOM)耦合簇参考下的分子第一电离势进行了验证。此外,我们提出了一个局部版本的非线性回归模型,并通过确定与空穴传输材料领域相关的两个大分子的最佳距离分离参数来证明其可转移性和预测能力。最后,我们利用t-SNE降维算法探索了QM7数据库的底层结构,并识别了导致偏离分段线性条件的结构和组成模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning the energy curvature versus particle number in approximate density functionals
The average energy curvature as a function of the particle number is a molecule-specific quantity, which measures the deviation of a given functional from the exact conditions of density functional theory (DFT). Related to the lack of derivative discontinuity in approximate exchange-correlation potentials, the information about the curvature has been successfully used to restore the physical meaning of Kohn-Sham orbital eigenvalues and to develop non-empirical tuning and correction schemes for density functional approximations. In this work, we propose the construction of a machine-learning framework targeting the average energy curvature between the neutral and the radical cation state of thousands of small organic molecules (QM7 database). The applicability of the model is demonstrated in the context of system-specific gamma-tuning of the LC-ωPBE functional and validated against the molecular first ionization potentials at equation-of-motion (EOM) coupled-cluster references. In addition, we propose a local version of the non-linear regression model and demonstrate its transferability and predictive power by determining the optimal range-separation parameter for two large molecules relevant to the field of hole-transporting materials. Finally, we explore the underlying structure of the QM7 database with the t-SNE dimensionality-reduction algorithm and identify structural and compositional patterns that promote the deviation from the piecewise linearity condition.
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