冰表面的分子指纹和频率产生谱:第一性原理机器学习研究

IF 8.5 Q1 CHEMISTRY, MULTIDISCIPLINARY
Margaret L. Berrens, Marcos F. Calegari Andrade, John T. Fourkas, Tuan Anh Pham* and Davide Donadio*, 
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引用次数: 0

摘要

了解冰表面的分子水平结构和动力学对于破译一些化学、物理和大气过程至关重要。振动和频率产生(SFG)光谱是探测空气-冰界面分子水平结构的最重要工具,因为它是一种表面特异性技术,但SFG光谱的分子解释具有挑战性。本研究利用机器学习潜力,以及在从头开始数据上训练的偶极子和极化模型,来计算空气-冰界面的SFG谱。在低于冰表面预融的温度下,我们的模拟支持在冰i表面存在质子有序排列,类似于在冰XI中看到的。此外,我们的模拟提供了SFG峰在可能的情况下分配给特定分子构型的见解,并评估了亚表层对整个SFG谱的贡献。这些见解增强了我们对冰表面环境化学振动研究的理解和解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Molecular Fingerprints of Ice Surfaces in Sum Frequency Generation Spectra: A First-Principles Machine Learning Study

Understanding the molecular-level structure and dynamics of ice surfaces is crucial for deciphering several chemical, physical, and atmospheric processes. Vibrational sum-frequency generation (SFG) spectroscopy is the most prominent tool for probing the molecular-level structure of the air–ice interface as it is a surface-specific technique, but the molecular interpretation of SFG spectra is challenging. This study utilizes a machine-learning potential, along with dipole and polarizability models trained on ab initio data, to calculate the SFG spectrum of the air–ice interface. At temperatures below ice surface premelting, our simulations support the presence of a proton-ordered arrangement at the Ice Ih surface, similar to that seen in Ice XI. Additionally, our simulations provide insight into the assignment of SFG peaks to specific molecular configurations where possible and assess the contribution of subsurface layers to the overall SFG spectrum. These insights enhance our understanding and interpretation of vibrational studies of environmental chemistry at the ice surface.

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来源期刊
CiteScore
9.10
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