Long-range electrostatic interactions critically affect polar materials. However, state-of-the-art atomistic potentials, such as neural networks or Gaussian approximation potentials employed in large-scale simulations, often neglect the role of these long-range electrostatic interactions. This study introduces a framework derived from first principles to evaluate the contribution of long-range electrostatic interactions to total energies, forces, and stresses. The model is designed to integrate seamlessly with existing short-range force fields without further first-principles calculations or retraining. The approach relies solely on physical observables, like the dielectric tensor and Born effective charges, that can be consistently calculated from first principles. We demonstrate that the model reproduces critical features, such as the LO-TO splitting and the long-wavelength phonon dispersions of polar materials, with benchmark results on the cubic phase of barium titanate (BaTiO3

Electrostatic interactions in atomistic and machine-learned potentials for polar materials / Monacelli, Lorenzo; Marzari, Nicola. - In: PHYSICAL REVIEW. B. - ISSN 2469-9950. - (2026). [10.1103/7ygl-8db2]

Electrostatic interactions in atomistic and machine-learned potentials for polar materials

Lorenzo Monacelli
Primo
;
Nicola Marzari
Ultimo
2026

Abstract

Long-range electrostatic interactions critically affect polar materials. However, state-of-the-art atomistic potentials, such as neural networks or Gaussian approximation potentials employed in large-scale simulations, often neglect the role of these long-range electrostatic interactions. This study introduces a framework derived from first principles to evaluate the contribution of long-range electrostatic interactions to total energies, forces, and stresses. The model is designed to integrate seamlessly with existing short-range force fields without further first-principles calculations or retraining. The approach relies solely on physical observables, like the dielectric tensor and Born effective charges, that can be consistently calculated from first principles. We demonstrate that the model reproduces critical features, such as the LO-TO splitting and the long-wavelength phonon dispersions of polar materials, with benchmark results on the cubic phase of barium titanate (BaTiO3
2026
machine learning, ab initio simulations, condensed matter,
01 Pubblicazione su rivista::01a Articolo in rivista
Electrostatic interactions in atomistic and machine-learned potentials for polar materials / Monacelli, Lorenzo; Marzari, Nicola. - In: PHYSICAL REVIEW. B. - ISSN 2469-9950. - (2026). [10.1103/7ygl-8db2]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1767153
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