基于原子对能量修正的神经网络模型X2-PEC

IF 4.8 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Minghong Jiang, Zhanfeng Wang, Yicheng Chen, Wenhao Zhang, Zhenyu Zhu, Wenjie Yan, Jianming Wu, Xin Xu
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引用次数: 0

摘要

随着人工神经网络的发展,其在化学领域的应用越来越广泛,特别是在各种分子性质的预测方面。本文介绍了X2-PEC方法,即我们小组开发的X1系列人工神经网络方法的第二次推广,利用对能量校正(PEC)。X2模型的精髓在于特征向量的构建,利用重叠积分和核心哈密顿积分,将物理和化学信息纳入特征向量,描述原子间的相互作用。旨在提高低阶密度泛函理论(DFT)计算的精度,如广泛使用的BLYP/6-31G(d)或B3LYP/6-31G(2df,p)方法,到顶级DFT计算的水平,如高精度双混合XYGJ-OS/GTLarge方法。在QM9数据集上训练,X2-PEC在预测具有不同键结构的C6H8和C4H4N2O等异构体的原子化能方面表现出色。X2-PEC模型在G2-HCNOF、PSH36、ALKANE28、BIGMOL20和HEDM45等数据集以及BH9的HCNOF子集的标准生成焓上的表现同样值得称赞,表明其具有良好的泛化能力和预测精度,以及进一步发展以达到更高精度的潜力。这些结果突出了X2-PEC模型通过深度学习将低阶DFT计算结果提升到高阶DFT计算水平的实际意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
X2-PEC: A Neural Network Model Based on Atomic Pair Energy Corrections

With the development of artificial neural networks (ANNs), its applications in chemistry have become increasingly widespread, especially in the prediction of various molecular properties. This work introduces the X2-PEC method, that is, the second generalization of the X1 series of ANN methods developed in our group, utilizing pair energy correction (PEC). The essence of the X2 model lies in its feature vector construction, using overlap integrals and core Hamiltonian integrals to incorporate physical and chemical information into the feature vectors to describe atomic interactions. It aims to enhance the accuracy of low-rung density functional theory (DFT) calculations, such as those from the widely used BLYP/6-31G(d) or B3LYP/6-31G(2df,p) methods, to the level of top-rung DFT calculations, such as those from the highly accurate doubly hybrid XYGJ-OS/GTLarge method. Trained on the QM9 dataset, X2-PEC excels in predicting the atomization energies of isomers such as C6H8 and C4H4N2O with varying bonding structures. The performance of the X2-PEC model on standard enthalpies of formation for datasets such as G2-HCNOF, PSH36, ALKANE28, BIGMOL20, and HEDM45, as well as a HCNOF subset of BH9 for reaction barriers, is equally commendable, demonstrating its good generalization ability and predictive accuracy, as well as its potential for further development to achieve greater accuracy. These outcomes highlight the practical significance of the X2-PEC model in elevating the results from lower-rung DFT calculations to the level of higher-rung DFT calculations through deep learning.

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来源期刊
CiteScore
6.60
自引率
3.30%
发文量
247
审稿时长
1.7 months
期刊介绍: This distinguished journal publishes articles concerned with all aspects of computational chemistry: analytical, biological, inorganic, organic, physical, and materials. The Journal of Computational Chemistry presents original research, contemporary developments in theory and methodology, and state-of-the-art applications. Computational areas that are featured in the journal include ab initio and semiempirical quantum mechanics, density functional theory, molecular mechanics, molecular dynamics, statistical mechanics, cheminformatics, biomolecular structure prediction, molecular design, and bioinformatics.
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