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Benchmarking Universal Machine Learning Interatomic Potentials on Elemental Systems

Materials Science 2025-12-30 v2

Abstract

The rapid emergence of universal Machine Learning Interatomic Potentials (uMLIPs) has transformed materials modeling. However, a comprehensive understanding of their generalization behavior across configurational space remains an open challenge. In this work, we introduce a benchmarking framework to evaluate both the equilibrium and far-from-equilibrium performance of state-of-the-art uMLIPs, including three MACE-based models, MatterSim, and PET-MAD. Our assessment utilizes Equation-of-State (EOS) tests to evaluate near-equilibrium properties, such as bulk moduli and equilibrium volumes, alongside extensive Minima Hopping (MH) structural searches to probe the global Potential Energy Surface (PES). Here, we assess universality within the fundamental limit of unary (elemental) systems, which serve as a necessary baseline for broader chemical generalization and provide a framework that can be systematically extended to multicomponent materials. We find that while most models exhibit high accuracy in reproducing equilibrium volumes for transition metals, significant performance gaps emerge in alkali and alkaline earth metal groups. Crucially, our MH results reveal a decoupling between search efficiency and structural fidelity, highlighting that smoother learned PESs do not necessarily yield more accurate energetic landscapes.

Keywords

Cite

@article{arxiv.2512.20230,
  title  = {Benchmarking Universal Machine Learning Interatomic Potentials on Elemental Systems},
  author = {Hossein Tahmasbi and Andreas Knüpfer and Thomas D. Kühne and Hossein Mirhosseini},
  journal= {arXiv preprint arXiv:2512.20230},
  year   = {2025}
}