Science and Technology of Advanced Materials: Methods (Dec 2022)

Machine-Learning-Based phase diagram construction for high-throughput batch experiments

  • Ryo Tamura,
  • Guillaume Deffrennes,
  • Kwangsik Han,
  • Taichi Abe,
  • Haruhiko Morito,
  • Yasuyuki Nakamura,
  • Masanobu Naito,
  • Ryoji Katsube,
  • Yoshitaro Nose,
  • Kei Terayama

DOI
https://doi.org/10.1080/27660400.2022.2076548
Journal volume & issue
Vol. 2, no. 1
pp. 153 – 161

Abstract

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To know phase diagrams is a time saving approach for developing novel materials. To efficiently construct phase diagrams, a machine learning technique was developed using uncertainty sampling, which is called as PDC (Phase Diagram Construction) package [K. Terayama et al. Phys. Rev. Mater. 3, 033802 (2019).]. In this method, the most uncertain point in the phase diagram was suggested as the next experimental condition. However, owing to recent progress in lab automation techniques and robotics, high-throughput batch experiments can be performed. To benefit from such a high-throughput nature, multiple conditions must be selected simultaneously to effectively construct a phase diagram using a machine learning technique. In this study, we consider some strategies to do so, and their performances were compared when exploring ternary isothermal sections (two-dimensional) and temperature-dependent ternary phase diagrams (three-dimensional). We show that even if the suggestions are explored several instead of one at a time, the performance did not change drastically. Thus, we conclude that PDC with multiple suggestions is suitable for high-throughput batch experiments and can be expected to play an active role in next-generation automated material development.

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