Litcius/Paper detail

Chemical bond based machine learning model for dipole moment: Application to dielectric properties of liquid methanol and ethanol

Tomohito Amano, Tamio Yamazaki, Shinji Tsuneyuki

2024Physical review. B./Physical review. B11 citationsDOIOpen Access PDF

Abstract

We introduce a versatile machine-learning scheme for predicting dipole moments of molecular liquids to study dielectric properties, implemented in . We attribute the center of mass of Wannier functions, called Wannier centers, to each chemical bond and create neural network models that predict the Wannier centers for each chemical bond. Application to liquid methanol and ethanol shows that our neural network models successfully predict the dipole moment of various liquid configurations in close agreement with DFT calculations. We show that the dipole moment and dielectric constant in the liquids are greatly enhanced by the polarization of Wannier centers due to local intermolecular interactions. The calculated dielectric spectra quantitatively agree with experiments over terahertz (THz) to infrared regions. Furthermore, we investigate the physical origin of THz absorption spectra of methanol, confirming the importance of translational and librational motions. Our method is applicable to other molecular liquids and can be widely used to study their dielectric properties. Published by the American Physical Society 2024

Topics & Concepts

DielectricMoment (physics)DipoleMethanolBond dipole momentEthanolMaterials scienceCondensed matter physicsTransition dipole momentChemistryOrganic chemistryPhysicsOptoelectronicsClassical mechanicsAdvanced Chemical Sensor TechnologiesSpectroscopy and Chemometric AnalysesComputational Drug Discovery Methods
Chemical bond based machine learning model for dipole moment: Application to dielectric properties of liquid methanol and ethanol | Litcius