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Incorporation of Local Structure into Kriging Models for the Prediction of Atomistic Properties in the Water Decamer

机译:将局部结构融入Kriging模型预测水十分子中的原子性质

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摘要

Machine learning algorithms have been demonstrated to predict atomistic properties approaching the accuracy of quantum chemical calculations at significantly less computational cost. Difficulties arise, however, when attempting to apply these techniques to large systems, or systems possessing excessive conformational freedom. In this article, the machine learning method kriging is applied to predict both the intra-atomic and interatomic energies, as well as the electrostatic multipole moments, of the atoms of a water molecule at the center of a 10 water molecule (decamer) cluster. Unlike previous work, where the properties of small water clusters were predicted using a molecular local frame, and where training set inputs (features) were based on atomic index, a variety of feature definitions and coordinate frames are considered here to increase prediction accuracy. It is shown that, for a water molecule at the center of a decamer, no single method of defining features or coordinate schemes is optimal for every property. However, explicitly accounting for the structure of the first solvation shell in the definition of the features of the kriging training set, and centring the coordinate frame on the atom-of-interest will, in general, return better predictions than models that apply the standard methods of feature definition, or a molecular coordinate frame.
机译:机器学习算法已被证明可以以显着更少的计算成本预测接近量子化学计算准确性的原子特性。但是,当尝试将这些技术应用于大型系统或拥有过多构象自由的系统时,就会出现困难。在本文中,机器学习方法kriging用于预测位于10个水分子(迪卡默)簇中心的水分子原子的原子内和原子间能以及静电多极矩。与以前的工作不同,前者使用分子局部框架来预测小型水团簇的属性,而训练集输入(特征)是基于原子指数的,因此此处考虑了各种特征定义和坐标框架以提高预测精度。结果表明,对于位于decamer中心的水分子而言,没有一种单一的定义特征或坐标方案的方法对于每种特性都是最优的。但是,在定义克里金法训练集的特征时,明确考虑第一个溶剂化壳的结构,并将坐标系居中放在感兴趣的原子上,通常将比应用该标准的模型返回更好的预测特征定义方法或分子坐标系。

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