Ephemeral data derived potentials for random structure search
Chris J. Pickard

TL;DR
This paper introduces ephemeral data derived potentials (EDDPs) compatible with ab initio random structure searching (AIRSS), enabling rapid, first-principles-quality structure prediction for complex materials at reduced computational cost.
Contribution
The authors develop a fast, disposable potential construction scheme using neural networks and environment vectors, enhancing structure search efficiency without sacrificing accuracy.
Findings
Successfully rediscovered complex boron structures using EDDPs.
Enabled discovery of a dense silane structure at high pressure.
Demonstrated EDDPs' effectiveness across multiple materials.
Abstract
Structure prediction has become a key task of the modern atomistic sciences, and depends on the rapid and reliable computation of the energy landscape. First principles density functional based calculations are highly reliable, faithfully describing the entire energy landscape. They are, however, computationally intensive and slow compared to interatomic potentials. Great progress has been made in the development of machine learning, or data derived, potentials, which promise to describe the entire energy landscape at first principles quality. However, compared to first principles approaches, their preparation can be time consuming and delay searching. Ab initio random structure searching (AIRSS) is a straightforward and powerful approach to structure prediction, based on the stochastic generation of sensible initial structures, and their repeated local optimisation. Here, a scheme,…
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