4.6 Article

Experimental Ni3TeO6 synthesis condition exploration accelerated by active learning

Journal

MATERIALS LETTERS
Volume 352, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.matlet.2023.135070

Keywords

Machine learning; Optimization synthesis; Phase diagram; Crystalline materials

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In this study, an active learning scheme was used to predict the phase configuration of Ni3TeO6 using a complex hydrothermal synthesis procedure. With only 9 data points, 87% of the experimental condition space was successfully predicted. The developed scheme not only explored the NTO species but also provided a powerful tool for experimental condition optimization.
Material synthesis is time- and chemicals-consuming due to the traditional (brute force) methodology. For instance, Ni3TeO6 (NTO) is a multiferroic material relevant in different applications. Herein, we used an active learning scheme to explore the different phases obtained using a complex hydrothermal synthesis procedure instead of a solid-state methodology. Different from conventional ML prediction requiring a large dataset, we show that with only 9 data points obtained through experimental endeavor, 87% of the experimental condition space is predicted. The predicted phase configuration is verified with the sample in a new synthetic work. Beside exploring the NTO species, scheme developed herein constitute a powerful tool for experimental condition optimization.

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