Accelerating high-throughput searches for new alloys with active learning of interatomic potentials
Konstantin Gubaev, Evgeny V. Podryabinkin, Gus L. W. Hart, Alexander, V. Shapeev

TL;DR
This paper introduces an active learning approach using machine-learning interatomic potentials to accelerate the prediction of new alloy structures, reducing computational costs and expanding exploration of materials space.
Contribution
The authors develop a versatile active learning method that predicts alloy structures with minimal DFT calculations, capable of handling diverse lattice types beyond traditional methods.
Findings
Achieved 3-4 orders of magnitude speedup over DFT-based methods.
Predicted unreported stable alloy structures in Cu-Pd, Co-Nb-V, and Al-Ni-Ti systems.
Demonstrated broader exploration of materials space than existing high-throughput approaches.
Abstract
We propose an approach to materials prediction that uses a machine-learning interatomic potential to approximate quantum-mechanical energies and an active learning algorithm for the automatic selection of an optimal training dataset. Our approach significantly reduces the amount of DFT calculations needed, resorting to DFT only to produce the training data, while structural optimization is performed using the interatomic potentials. Our approach is not limited to one (or a small number of) lattice types (as is the case for cluster expansion, for example) and can predict structures with lattice types not present in the training dataset. We demonstrate the effectiveness of our algorithm by predicting the convex hull for the following three systems: Cu-Pd, Co-Nb-V, and Al-Ni-Ti. Our method is three to four orders of magnitude faster than conventional high-throughput DFT calculations and…
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