Skip to Main Content (Press Enter)

Logo UNIMI
  • ×
  • Home
  • People
  • Projects
  • Fields
  • Units
  • Outputs
  • Third Mission

Expertise & Skills
Logo UNIMI

|

Expertise & Skills

unimi.it
  • ×
  • Home
  • People
  • Projects
  • Fields
  • Units
  • Outputs
  • Third Mission
  1. Outputs

Extending atomic decomposition and many-body representation with a chemistry-motivated approach to machine learning potentials

Academic Article
Publication Date:
2025
Citation:
Extending atomic decomposition and many-body representation with a chemistry-motivated approach to machine learning potentials / Q. Yu, R. Ma, C. Qu, R. Conte, A. Nandi, P. Pandey, P.L. Houston, D.H. Zhang, J.M. Bowman. - In: NATURE COMPUTATIONAL SCIENCE. - ISSN 2662-8457. - (2025), pp. 3887.1-3887.12. [Epub ahead of print] [10.1038/s43588-025-00790-0]
abstract:
Most widely used machine learning potentials for condensed-phase applications rely on many-body permutationally invariant polynomial or atom-centered neural networks. However, these approaches face challenges in achieving chemical interpretability in atomistic energy decomposition and fully matching the computational efficiency of traditional force fields. Here we present a method that combines aspects of both approaches and balances accuracy and force-field-level speed. This method utilizes a monomer-centered representation, where the potential energy is decomposed into the sum of chemically meaningful monomeric energies. The structural descriptors of monomers are described by one-body and two-body effective interactions, enforced by appropriate sets of permutationally invariant polynomials as inputs to the feed-forward neural networks. Systematic assessments of models for gas-phase water trimer, liquid water, methane–water cluster and liquid carbon dioxide are performed. The improved accuracy, efficiency and flexibility of this method have promise for constructing accurate machine learning potentials and enabling large-scale quantum and classical simulations for complex molecular systems.
IRIS type:
01 - Articolo su periodico
List of contributors:
Q. Yu, R. Ma, C. Qu, R. Conte, A. Nandi, P. Pandey, P.L. Houston, D.H. Zhang, J.M. Bowman
Authors of the University:
CONTE RICCARDO ( author )
Link to information sheet:
https://air.unimi.it/handle/2434/1160842
Full Text:
https://air.unimi.it/retrieve/handle/2434/1160842/2916130/MB_PIPNet_revision.pdf
Project:
Piano di Sostegno alla Ricerca 2015-2017 - Linea 2 "Dotazione annuale per attività istituzionali" (anno 2022)
  • Research Areas

Research Areas

Concepts (2)


Settore CHEM-02/A - Chimica fisica

Settore PHYS-04/A - Fisica teorica della materia, modelli, metodi matematici e applicazioni
  • Guide
  • Help
  • Accessibility
  • Privacy
  • Use of cookies
  • Legal notices

Powered by VIVO | Designed by Cineca | 26.5.1.0