4.7 Article

Spectroscopy from Machine Learning by Accurately Representing the Atomic Polar Tensor

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JOURNAL OF CHEMICAL THEORY AND COMPUTATION
卷 19, 期 3, 页码 705-712

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AMER CHEMICAL SOC
DOI: 10.1021/acs.jctc.2c00788

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Vibrational spectroscopy is a key technique to understand microscopic structure and dynamics, but often difficult without theoretical approaches. This study uses the E(3)-equivariant neural network e3nn to fit the atomic polar tensor of liquid water on existing molecular dynamics simulations. The introduced methodology overcomes computational cost and enables direct assignment of IR spectral features to nuclear motion.
Vibrational spectroscopy is a key technique to elucidate microscopic structure and dynamics. Without the aid of theoretical approaches, it is, however, often difficult to understand such spectra at a microscopic level. Ab initio molecular dynamics has repeatedly proved to be suitable for this purpose; however, the computational cost can be daunting. Here, the E(3)-equivariant neural network e3nn is used to fit the atomic polar tensor of liquid water a posteriori on top of existing molecular dynamics simulations. Notably, the introduced methodology is general and thus transferable to any other system as well. The target property is most fundamental and gives access to the IR spectrum, and more importantly, it is a highly powerful tool to directly assign IR spectral features to nuclear motion -a connection which has been pursued in the past but only using severe approximations due to the prohibitive computational cost. The herein introduced methodology overcomes this bottleneck. To benchmark the machine learning model, the IR spectrum of liquid water is calculated, indeed showing excellent agreement with the explicit reference calculation. In conclusion, the presented methodology gives a new route to calculate accurate IR spectra from molecular dynamics simulations and will facilitate the understanding of such spectra on a microscopic level.

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