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Accelerated identification of equilibrium structures of multicomponent inorganic crystals using machine learning potentials

Engineering and Technology

Accelerated identification of equilibrium structures of multicomponent inorganic crystals using machine learning potentials

S. Kang, W. Jeong, et al.

Experience a breakthrough in the discovery of inorganic compounds with SPINNER, a revolutionary structure-prediction framework developed by authors from Seoul National University. This innovative approach utilizes neural network potentials to accelerate crystal structure prediction up to 1000 times faster than traditional methods, unlocking the potential for large-scale exploration of new materials.

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~3 min • Beginner • English
Abstract
The discovery of multicomponent inorganic compounds can provide direct solutions to scientific and engineering challenges, yet the vast uncharted material space dwarfs synthesis throughput. While crystal structure prediction (CSP) may mitigate this frustration, the exponential complexity of CSP and expensive density functional theory (DFT) calculations prohibit material exploration at scale. Here we introduce SPINNER, a structure-prediction framework based on random and evolutionary searches. Harnessing speed and accuracy of neural network potentials (NNPs), the program navigates configurational spaces 10^2–10^3 times faster than DFT-based methods. Furthermore, SPINNER incorporates algorithms tuned for NNPs, achieving performances exceeding conventional algorithms. In blind tests on 60 ternary compositions, SPINNER identifies experimental (or theoretically more stable) phases for ~80% of materials. When benchmarked against data-mining or DFT-based evolutionary predictions, SPINNER identifies more stable phases in many cases. By developing a reliable and fast structure-prediction framework, this work paves the way to large-scale, open exploration of undiscovered inorganic crystals.
Publisher
npj Computational Materials
Published On
May 12, 2022
Authors
Sungwoo Kang, Wonseok Jeong, Changho Hong, Seungwoo Hwang, Youngchae Yoon, Seungwu Han
Tags
multicomponent compounds
crystal structure prediction
neural network potentials
accelerated computation
ternary compositions
material discovery
inorganic crystals
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