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A Machine Learning Approach for MP2 Correlation Energies and Its Application to Organic Compounds

机译:MP2相关能量的机器学习方法及其在有机化合物中的应用

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A proper treatment of electron correlation effects is indispensable for accurate simulation of compounds. Various post-Hartree–Fock methods have been adopted to calculate correlation energies of chemical systems, but time complexity usually prevents their usage in a large scale. Here, we propose a density functional approximation, based on machine learning using neural networks, which can be readily employed to produce results comparable to second-order M?ller–Plesset perturbation (MP2) ones for organic compounds with reduced computational cost. Various systems have been tested and the transferability across basis sets, structures, and nuclear configurations has been evaluated. Only a small number of molecules at the equilibrium structure has been needed for the training, and generally less than 5% relative error has been achieved for structures outside the training domain and systems containing about 140 atoms. In addition, this approach has been applied to make predictions on correlation energies of nuclear configurations extracted from density functional theory-based molecular dynamics trajectories with only one or two structures as training data.
机译:正确处理电子关联效应对于精确模拟化合物是必不可少的。各种后Hartree–Fock方法已被用于计算化学系统的关联能,但时间复杂性通常阻碍了它们的大规模使用。在这里,我们提出了一种基于神经网络机器学习的密度泛函近似,它可以很容易地用于产生与二阶M?ller–有机化合物的Plesset微扰(MP2)微扰,计算成本更低。已经对各种系统进行了测试,并评估了基础集、结构和核配置之间的可转移性。训练只需要平衡结构处的少量分子,对于训练域之外的结构和包含约140个原子的系统,通常相对误差小于5%。此外,该方法还被应用于从基于密度泛函理论的分子动力学轨迹中提取的核构型关联能的预测,其中只有一个或两个结构作为训练数据。

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