Benchmarking Universal Machine Learning Force Fields with Hydrogen-Bonding Cooperativity

Authors

  • Xinping Feng
  • You Xu
  • Jing Huang

DOI:

https://doi.org/10.4208/cicc.2025.90.02

Abstract

Machine learning force fields (MLFFs) offer a promising balance between quantum mechanical (QM) accuracy and molecular mechanics efficiency. While MLFFs have shown strong performance in modeling short-range interactions and reproducing potential energy surfaces, their ability to capture long-range cooperative effects remains underexplored. In this study, we assess the ability of three MLFF models — ANI, MACE-OFF, and Orb — to reproduce cooperative interactions arising from environmental induction and dispersion, which are essential for many biomolecular processes. Using a recently proposed framework, we quantify hydrogen bond (H-bond) cooperativity in N-methylacetamide polymers. Our results show that all MLFFs capture cooperativity to some extent, with MACE-OFF yielding the closest agreement with QM data. These findings highlight the importance of evaluating many-body effects in MLFFs and suggest that H-bond cooperativity can serve as a useful benchmark for improving their physical fidelity.

Published

2025-06-13

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How to Cite

Benchmarking Universal Machine Learning Force Fields with Hydrogen-Bonding Cooperativity. (2025). Communications in Computational Chemistry, 7(2), 152-160. https://doi.org/10.4208/cicc.2025.90.02