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Machine learning enhanced global optimization by clustering local environments to enable bundled atomic energies

机译:机器学习通过聚类本地环境来增强全局优化,以启用捆绑原子能

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摘要

We show how to speed up global optimization of molecular structures using machine learning methods. To represent the molecular structures, we introduce the auto-bag feature vector that combines (i) a local feature vector for each atom, (ii) an unsupervised clustering of such feature vectors for many atoms across several structures, and (iii) a count for a given structure of how many times each cluster is represented. During subsequent global optimization searches, accumulated structure-energy relations of relaxed structural candidates are used to assign local energies to each atom using supervised learning. Specifically, the local energies follow from assigning energies to each cluster of local feature vectors and demanding the sum of local energies to amount to the structural energies in the least squares sense. The usefulness of the method is demonstrated in basin hopping searches for 19-atom structures described by single- or double-well Lennard-Jones type potentials and for 24-atom carbon structures described by density functional theory. In all cases, utilizing the local energy information derived on-the-fly enhances the rate at which the global minimum energy structure is found. Published by AIP Publishing.
机译:我们展示了如何使用机器学习方法加快全局优化分子结构。要代表分子结构,我们介绍了组合(i)用于每个原子的局部特征向量的自动袋特征向量,(ii)对多个结构的许多原子的这种特征向量的无监督聚类,(iii)计数对于每个群集的特定结构表示每个群集的次数。在随后的全局优化搜索期间,放松结构候选者的累积结构 - 能量关系用于使用监督学习将局部能量分配给每个原子。具体地,局部能量遵循将能量分配给每个局部特征向量,并要求局部能量的总和到最小二乘意义上的结构能量。在盆地跳跃搜索的用于由单阱或双井Lennard-Jone型电位和由密度函数理论描述的24原子碳结构描述的19-原子结构中的有用性。在所有情况下,利用导向的局部能量信息增强了发现全局最小能量结构的速率。通过AIP发布发布。

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