Machine learning the screening factor in the soft bond valence approach for rapid crystal structure estimation
Keisuke Kameda, Takaaki Ariga, Kazuma Ito, Manabu Ihara, and Sergei, Manzhos

TL;DR
This paper enhances the soft bond valence approach for rapid crystal structure estimation by modeling the screening factor as a function of chemical composition, significantly improving accuracy for new ceramic structures.
Contribution
It introduces a machine learning-based method to adapt the screening factor in SoftBV, improving structure prediction accuracy for complex oxides.
Findings
Modeling the screening factor improves structure prediction accuracy.
GPR-NN method outperforms linear regression and neural networks.
Enhanced SoftBV accurately predicts structural parameters of new ceramics.
Abstract
Development of new functional ceramics is important for several applications, including electrochemical batteries and fuel cells. Computational prescreening and selection of such materials can help discover novel materials but is challenging due to the high cost of electronic structure calculations which would be needed to compute the structures and properties of interest such as the material's stability and ion diffusion properties. The soft bond valence (SoftBV) approach is attractive for rapid prescreening among multiple compositions and structures, but the simplicity of the approximation can make the results inaccurate. We explore the possibility of enhancing the accuracy of the SoftBV approach when estimating crystal structures by adapting the parameters of the approximation to the chemical composition. Specifically, on the examples of perovskite- and spinel-type oxides that have…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Crystallography and molecular interactions
