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Neural network molecular dynamics simulations of solid-liquid interfaces: water at low-index copper surfaces

机译:固液界面的神经网络分子动力学模拟:低折射率铜表面的水

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Solid-liquid interfaces have received considerable attention in recent years due to their central role in many technologically relevant fields like electrochemistry, heterogeneous catalysis and corrosion. As the chemical processes in these examples take place primarily at the interface, understanding the structural and dynamical properties of the interfacial water molecules is of vital importance. Here, we use a firstprinciples quality high-dimensional neural network potential built from dispersion-corrected density functional theory data in molecular dynamics simulations to investigate water-copper interfaces as a prototypical case. After performing convergence tests concerning the required supercell size and water film diameter, we investigate numerous properties of the interfacial water molecules at the low-index copper (111), (100) and (110) surfaces. These include density profiles, hydrogen bond properties, lateral mean squared displacements and residence times of the water molecules at the surface. We find that in general the copper-water interaction is rather weak with the strongest interactions observed at the Cu(110) surface, followed by the Cu(100) and Cu(111) surfaces. The distribution of the water molecules in the first hydration layer exhibits a double peak structure. In all cases, the molecules closest to the surface are predominantly allocated on top of the metal sites and are aligned nearly parallel with the oxygen pointing slightly to the surface. The more distant molecules in the first hydration layer at the Cu(111) and Cu(100) surfaces are mainly found in between the top sites, whereas at the Cu(110) surface most of these water molecules are found above the trenches of the close packed atom rows at the surface.
机译:近年来,固液界面在电化学,非均相催化和腐蚀等许多与技术相关的领域中发挥着重要作用,因此受到了广泛的关注。由于这些示例中的化学过程主要发生在界面上,因此了解界面水分子的结构和动力学特性至关重要。在这里,我们使用分子扩散模拟中由色散校正的密度泛函理论数据构建的第一原理高质量高维神经网络潜力来研究水-铜界面。在进行了有关所需超级电池尺寸和水膜直径的收敛测试后,我们研究了低折射率铜(111),(100)和(110)表面上界面水分子的许多特性。这些包括密度分布,氢键性质,横向均方位移和水分子在表面的停留时间。我们发现,一般来说,铜与水的相互作用较弱,在Cu(110)表面观察到的相互作用最强,其次是Cu(100)和Cu(111)表面。在第一水合层中水分子的分布表现出双峰结构。在所有情况下,最接近表面的分子主要分配在金属位点的顶部,并且与指向表面的氧气几乎平行排列。在Cu(111)和Cu(100)表面的第一水合层中距离较远的分子主要存在于顶部位点之间,而在Cu(110)表面,这些水分子中的大多数位于沟槽的上方。在表面封闭堆积的原子行。

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