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Long-range electrostatics for machine learning interatomic potentials is easier than we thought.

Dongjin Kim1, Bingqing Cheng1,2,3,4

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Modern machine learning interatomic potentials (MLIPs) lack long-range electrostatics. The Latent Ewald Summation framework captures these interactions using environment-dependent charges and avoiding ambiguous partial charges.

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Area of Science:

  • Computational materials science
  • Quantum chemistry
  • Machine learning

Background:

  • Machine learning interatomic potentials (MLIPs) are crucial for simulating materials.
  • A key limitation of current MLIPs is the absence of long-range electrostatic interactions.
  • This deficiency restricts their application in areas like interfaces, charge-transfer reactions, and polar materials.

Purpose of the Study:

  • To present the Latent Ewald Summation framework for incorporating long-range electrostatics into MLIPs.
  • To distill two core design principles for capturing electrostatic interactions and electrical response.
  • To demonstrate the framework's flexibility and broad applicability.

Main Methods:

  • Developing a Coulomb functional form incorporating environment-dependent charges.
  • Avoiding explicit training on density functional theory (DFT) partial charges.
  • Augmenting existing short-range MLIPs with the Latent Ewald Summation framework.

Main Results:

  • The Latent Ewald Summation framework effectively captures long-range electrostatic interactions, charges, and electrical response.
  • The framework can be integrated with various MLIPs and charge equilibration schemes.
  • Inferred or fine-tuned dipoles and Born effective charges are achievable.

Conclusions:

  • Incorporating long-range electrostatics into MLIPs is more straightforward than previously thought.
  • The presented physics-guided design rules offer a broadly applicable solution.
  • This advancement enables more reliable MLIP simulations for a wider range of materials and phenomena.