Nandi Apurba, Pandey Priyanka, Houston Paul L, Qu Chen, Yu Qi, Conte Riccardo, Tkatchenko Alexandre, Bowman Joel M
Department of Physics and Materials Science, University of Luxembourg, L-1511 Luxembourg City, Luxembourg.
Department of Chemistry and Cherry L. Emerson Center for Scientific Computation, Emory University, Atlanta, Georgia 30322, United States.
J Chem Theory Comput. 2024 Oct 22;20(20):8807-8819. doi: 10.1021/acs.jctc.4c00977. Epub 2024 Oct 3.
Progress in machine learning has facilitated the development of potentials that offer both the accuracy of first-principles techniques and vast increases in the speed of evaluation. Recently, Δ-machine learning has been used to elevate the quality of a potential energy surface (PES) based on low-level, e.g., density functional theory (DFT) energies and gradients to close to the gold-standard coupled cluster level of accuracy. We have demonstrated the success of this approach for molecules, ranging in size from HO to 15-atom acetyl-acetone and tropolone. These were all done using the B3LYP functional. Here, we investigate the generality of this approach for the PBE, M06, M06-2X, and PBE0 + MBD functionals, using ethanol as the example molecule. Linear regression with permutationally invariant polynomials is used to fit both low-level and correction PESs. These PESs are employed for standard RMSE analysis for training and test data sets, and then general fidelity tests such as energetics of stationary points, normal-mode frequencies, and torsional potentials are examined. We achieve similar improvements in all cases. Interestingly, we obtained significant improvement over DFT gradients where coupled cluster gradients were not used to correct the low-level PES. Finally, we present some results for correcting a recent molecular mechanics force field for ethanol and comment on the possible generality of this approach.
机器学习的进展推动了势能的发展,这些势能兼具第一性原理技术的准确性,且评估速度大幅提高。最近,Δ机器学习已被用于基于低水平(例如密度泛函理论(DFT)能量和梯度)提升势能面(PES)的质量,使其接近金标准耦合簇精度水平。我们已经证明了这种方法对于从HO到15原子的乙酰丙酮和托酚酮等不同大小分子的成功。这些都是使用B3LYP泛函完成的。在此,我们以乙醇为例,研究这种方法对于PBE、M06、M06 - 2X和PBE0 + MBD泛函的通用性。使用具有排列不变多项式的线性回归来拟合低水平和校正后的PES。这些PES用于对训练和测试数据集进行标准均方根误差(RMSE)分析,然后检查诸如驻点能量、简正模式频率和扭转势能等一般保真度测试。在所有情况下我们都实现了类似的改进。有趣的是,在未使用耦合簇梯度校正低水平PES的情况下,我们相对于DFT梯度有了显著改进。最后,我们给出了一些校正乙醇最新分子力学力场的结果,并对这种方法可能的通用性进行了评论。