Universal machine learning interatomic potentials poised to supplant DFT in modeling general defects in metals and random alloys

Journal Article (2025)
Author(s)

F.S. Shuang (TU Delft - Team Poulumi Dey)

Z. Wei (TU Delft - Team Poulumi Dey)

K. Liu (TU Delft - Team Marcel Sluiter)

Wei Gao (Texas A&M University)

Poulumi Dey (TU Delft - Team Poulumi Dey)

Research Group
Team Poulumi Dey
DOI related publication
https://doi.org/10.1088/2632-2153/adea2d
More Info
expand_more
Publication Year
2025
Language
English
Research Group
Team Poulumi Dey
Issue number
3
Volume number
6
Reuse Rights

Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.

Abstract

Recent advances in machine learning, combined with the generation of extensive density functional theory (DFT) datasets, have enabled the development of universal machine learning interatomic potentials (uMLIPs). These models offer broad applicability across the periodic table, achieving first-principles accuracy at a fraction of the computational cost of traditional DFT calculations. In this study, we demonstrate that state-of-the-art pretrained uMLIPs can effectively replace DFT for accurately modeling complex defects in a wide range of metals and alloys. Our investigation spans diverse scenarios, including grain boundaries and general defects in pure metals, defects in high-entropy alloys, hydrogen-alloy interactions, and solute-defect interactions. Remarkably, the latest EquiformerV2 models achieve DFT-level accuracy on comprehensive defect datasets, with root mean square errors below 5 meV atom−1 for energies and 100 meV Å−1 for forces, outperforming specialized machine learning potentials such as moment tensor potential and atomic cluster expansion. We also present a systematic analysis of accuracy versus computational cost and explore uncertainty quantification for uMLIPs. A detailed case study of tungsten (W) demonstrates that data on pure W alone is insufficient for modeling complex defects in uMLIPs, underscoring the critical importance of advanced machine learning architectures and diverse datasets, which include over 100 million structures spanning all elements. These findings establish uMLIPs as a robust alternative to DFT and a transformative tool for accelerating the discovery and design of high-performance materials.