首页> 外文期刊>The Journal of Chemical Physics >Delta-machine learning for potential energy surfaces: A PIP approach to bring a DFT-based PES to CCSD(T) level of theory
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Delta-machine learning for potential energy surfaces: A PIP approach to bring a DFT-based PES to CCSD(T) level of theory

机译:Delta-Machine学习潜在能量表面:一种带来基于DFT的PE的PIP方法,以CCSD(T)理论水平

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摘要

"Delta -machine learning" refers to a machine learning approach to bring a property such as a potential energy surface (PES) based on low-level (LL) density functional theory (DFT) energies and gradients close to a coupled cluster (CC) level of accuracy. Here, we present such an approach that uses the permutationally invariant polynomial (PIP) method to fit high-dimensional PESs. The approach is represented by a simple equation, in obvious notation V-LL -> CC = V-LL + Delta VCC-LL, and demonstrated for CH4, H3O+, and trans and cis-N-methyl acetamide (NMA), CH3CONHCH3. For these molecules, the LL PES, V-LL, is a PIP fit to DFT/B3LYP/6-31+G(d) energies and gradients and Delta VCC-LL is a precise PIP fit obtained using a low-order PIP basis set and based on a relatively small number of CCSD(T) energies. For CH4, these are new calculations adopting an aug-cc-pVDZ basis, for H3O+, previous CCSD(T)-F12/aug-cc-pVQZ energies are used, while for NMA, new CCSD(T)-F12/aug-cc-pVDZ calculations are performed. With as few as 200 CCSD(T) energies, the new PESs are in excellent agreement with benchmark CCSD(T) results for the small molecules, and for 12-atom NMA, training is done with 4696 CCSD(T) energies.
机译:“Delta-机器学习”指的是一种机器学习方法,该方法基于低水平(LL)密度泛函理论(DFT)能量和梯度,使势能面(PES)等属性接近耦合簇(CC)精度水平。在这里,我们提出了一种使用置换不变多项式(PIP)方法来拟合高维PES的方法。该方法由一个简单的方程表示,用明显的符号V-LL->CC=V-LL+δVCC-LL表示,并对CH4、H3O+和反式及顺式N-甲基乙酰胺(NMA)、CH3CONHCH3进行了演示。对于这些分子,LL PES,V-LL,是DFT/B3LYP/6-31+G(d)能量和梯度的PIP拟合,而δVCC-LL是使用低阶PIP基集并基于相对较少的CCSD(T)能量获得的精确PIP拟合。对于CH4,这些是采用aug-cc pVDZ基础的新计算,对于H3O+,使用以前的CCSD(T)-F12/aug-cc pVQZ能量,而对于NMA,则执行新的CCSD(T)-F12/aug-cc pVDZ计算。新的PES只有200个CCSD(T)能量,与小分子的基准CCSD(T)结果非常一致,对于12原子NMA,训练是用4696个CCSD(T)能量完成的。

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