Published October 2, 2023 | Version v1
Workflow Open

Physics-inspired Equivariant Descriptors of Non-bonded Interactions

  • 1. Laboratory of Computational Science and Modelling (COSMO), École Polytechnique Fédérale de Lausanne (EPFL), CH-1015 Lausanne, Vaud, Switzerland

Description

One essential ingredient in many machine learning (ML) based methods for atomistic modeling of materials and molecules is the use of locality.
While allowing better system-size scaling, this systematically neglects long-range (LR) effects, such as electrostatics or dispersion interaction. We present an extension of the long distance equivariant (LODE) framework that can handle diverse LR interactions in a consistent way, and seamlessly integrates with preexisting methods by building new sets of atom centered features.
We provide a direct physical interpretation of these using the multipole expansion, which allows for simpler and more efficient implementations.
The framework is applied to simple toy systems as proof of concept, and a heterogeneous set of molecular dimers to push the method to its limits.
By generalizing LODE to arbitrary asymptotic behaviors, we provide a coherent approach to treat arbitrary two- and many-body non-bonded interactions in the data-driven modeling of matter.

Notes

Scripts and example datasets that can be used to reproduce the results in the referenced preprint (Kevin K. Huguenin-Dumittan, Philip Loche, Ni Haoran, Michele Ceriotti, Arxiv (submitted 2023)).

Files

plode_scripts_zenodo.zip

Files (1.3 MB)

Name Size Download all
md5:09c6c22aed96370e3b9cde0b5f075fa0
1.3 MB Preview Download

Additional details

Related works

Cites
Journal article: 10.1063/1.5128375 (DOI)
Journal article: 10.1039/D0SC04934D (DOI)

Funding

European Commission
FIAMMA - Fully Integrating Atomistic Modeling with Machine Learning 101001890

References

  • Kevin K. Huguenin-Dumittan, Philip Loche, Ni Haoran, Michele Ceriotti, Arxiv (2023)