论文标题

第一原理和深神经网络模拟的水的粘度

Viscosity in water from first-principles and deep-neural-network simulations

论文作者

Malosso, Cesare, Zhang, Linfeng, Car, Roberto, Baroni, Stefano, Tisi, Davide

论文摘要

我们报告了基于密度功能官能理论(DFT)的绿色kubo理论(AIMD),对近气响应和平衡的绿色Kubo理论(AIMD)进行了广泛的研究。为了应对实现可接受的统计准确性所需的较长仿真时间,使用深神经网络电位(NNP)增强了我们的从头算法。首先通过使用Perdew-Burke-Ernzerhof(PBE)交换相关功能获得了AIMD结果的验证,并仔细注意统计数据分析的重要方面,但经常被忽略。然后,我们将第二个NNP训练为从严格限制和适当规范(扫描)功能中生成的数据集。一旦通过将模拟温度引用到理论熔化的温度来抵消了熔线不完善的预测所产生的误差,我们对水的剪切粘度的扫描预测与实验非常吻合。

We report on an extensive study of the viscosity of liquid water at near-ambient conditions, performed within the Green-Kubo theory of linear response and equilibrium ab initio molecular dynamics (AIMD), based on density-functional theory (DFT). In order to cope with the long simulation times necessary to achieve an acceptable statistical accuracy, our ab initio approach is enhanced with deep-neural-network potentials (NNP). This approach is first validated against AIMD results, obtained by using the Perdew-Burke-Ernzerhof (PBE) exchange-correlation functional and paying careful attention to crucial, yet often overlooked, aspects of the statistical data analysis. Then, we train a second NNP to a dataset generated from the Strongly Constrained and Appropriately Normed (SCAN) functional. Once the error resulting from the imperfect prediction of the melting line is offset by referring the simulated temperature to the theoretical melting one, our SCAN predictions of the shear viscosity of water are in very good agreement with experiments.

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