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Equation of State of Fluid Methane from First Principles with Machine Learning Potentials

机译:从机器学习电位的第一个原理的流体甲烷状态方程

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摘要

The predictive simulation of molecular liquids requires potential energy surface (PES) models that are not only accurate but also computationally efficient enough to handle the large systems and long time scales required for reliable prediction of macroscopic properties. We present a new approach to the systematic approximation of the first-principles PES of molecular liquids using the GAP (Gaussian Approximation Potential) framework. The approach allows us to create potentials at several different levels of accuracy in reproducing the true PES and thus to determine the level of quantum chemistry that is necessary to accurately predict macroscopic properties. We test the approach by building a series of many-body potentials for liquid methane (CH4), which is difficult to model from first principles because its behavior is dominated by weak dispersion interactions with a significant many-body component. The increasing accuracy of the potentials in predicting the bulk density correlates with their fidelity to the true PES, whereas the trend with the empirical potentials tested is surprisingly the opposite. We conclude that an accurate, consistent prediction of its bulk density across wide ranges of temperature and pressure requires not only many-body dispersion but also quantum nuclear effects to be modeled accurately.
机译:分子液体的预测模拟需要潜在的能量表面(PES)模型不仅准确,而且还足以处理足够的宏观预测所需的大系统和长时间尺度。我们使用间隙(高斯近似电位)框架提出了一种新的分子液体PES的系统近似的方法。该方法使我们能够在再现真正的PE中以几种不同级别的准确度产生电位,从而确定准确地预测宏观性质所需的量子化学水平。我们通过构建一系列液体甲烷(CH4)的许多身体电位来测试方法,这难以从第一个原理模型,因为其行为是通过与重要的许多身体部件的弱分散相互作用来支配。预测散装密度的潜力的提高率与他们的保真度与真正的PE相关,而经验测试的趋势令人惊讶地相反。我们得出结论,对宽度的温度和压力范围的堆积密度的准确,一致地预测不仅需要准确地建模量的核效应。

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