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Fully First-Principles Surface Spectroscopy with Machine Learning

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Specialty Chemistry
Date 2023 Sep 6
PMID 37671886
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Abstract

Our current understanding of the structure and dynamics of aqueous interfaces at the molecular level has grown substantially due to the continuous development of surface-specific spectroscopies, such as vibrational sum-frequency generation (VSFG). As in other vibrational spectroscopies, we must turn to atomistic simulations to extract all of the information encoded in the VSFG spectra. The high computational cost associated with existing methods means that they have limitations in representing systems with complex electronic structure or in achieving statistical convergence. In this work, we combine high-dimensional neural network interatomic potentials and symmetry-adapted Gaussian process regression to overcome these constraints. We show that it is possible to model VSFG signals with fully accuracy using machine learning and illustrate the versatility of our approach on the water/air interface. Our strategy allows us to identify the main sources of theoretical inaccuracy and establish a clear pathway toward the modeling of surface-sensitive spectroscopy of complex interfaces.

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References
1.
Magnussen O, Gross A . Toward an Atomic-Scale Understanding of Electrochemical Interface Structure and Dynamics. J Am Chem Soc. 2019; 141(12):4777-4790. DOI: 10.1021/jacs.8b13188. View

2.
Schran C, Brezina K, Marsalek O . Committee neural network potentials control generalization errors and enable active learning. J Chem Phys. 2020; 153(10):104105. DOI: 10.1063/5.0016004. View

3.
Schienbein P . Spectroscopy from Machine Learning by Accurately Representing the Atomic Polar Tensor. J Chem Theory Comput. 2023; 19(3):705-712. PMC: 9933433. DOI: 10.1021/acs.jctc.2c00788. View

4.
Musil F, Zaporozhets I, Noe F, Clementi C, Kapil V . Quantum dynamics using path integral coarse-graining. J Chem Phys. 2022; 157(18):181102. DOI: 10.1063/5.0120386. View

5.
Grechko M, Hasegawa T, DAngelo F, Ito H, Turchinovich D, Nagata Y . Coupling between intra- and intermolecular motions in liquid water revealed by two-dimensional terahertz-infrared-visible spectroscopy. Nat Commun. 2018; 9(1):885. PMC: 5830436. DOI: 10.1038/s41467-018-03303-y. View