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Latent Ewald summation for machine learning of long-range interactions

arXiv:2408.15165 - [arXiv,PDF]
Authors
  • Name
    Bingqing Cheng
  • Affiliation
    Department of Chemistry, University of California, Berkeley, CA, USA
Machine learning interatomic potentials (MLIPs) often neglect long-range interactions, such as electrostatic and dispersion forces. In this work, we introduce a straightforward and efficient method to account for long-range interactions by learning a latent variable from local atomic descriptors and applying an Ewald summation to this variable. We demonstrate that in systems including charged and polar molecular dimers, bulk water, and water-vapor interface, standard short-ranged MLIPs can lead to unphysical predictions even when employing message passing. The long-range models effectively eliminate these artifacts, with only about twice the computational cost of short-range MLIPs.