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AIPHAD, an active learning web application for visual understanding of phase diagrams

Engineering and Technology

AIPHAD, an active learning web application for visual understanding of phase diagrams

R. Tamura, H. Morito, et al.

Discover how AIPHAD, an innovative open-source web application, harnesses artificial intelligence to revolutionize phase diagram exploration. This groundbreaking research, conducted by Ryo Tamura, Haruhiko Morito, Guillaume Deffrennes, Masanobu Naito, Yoshitaro Nose, Taichi Abe, and Kei Terayama, showcases the efficient identification of the Heusler phase in the Fe-Ti-Sn ternary system through advanced machine learning techniques.... show more
Abstract
Phase diagrams provide considerable information that is vital for materials exploration. However, the determination of multidimensional phase diagrams typically requires a significant investment of time, cost, and human resources owing to the necessity of numerous experiments or simulations. Machine learning and artificial intelligence techniques present a viable solution for expediting phase diagrams investigations. Additionally, effective visualization is critical for understanding phase diagrams. This study reports the development of AIPHAD (Artificial Intelligence technique for PHAse Diagram), an open-source web application to assist in the investigation and visual understanding of phase diagrams using active learning. AIPHAD employs PDC (Phase Diagram Construction) algorithm, which operates on the principle of uncertainty sampling in active learning. The AIPHAD application facilitates the examination of five diagram types: two-variable diagrams, three-variable diagrams, ternary sections, ternary phase diagrams, and quaternary sections. The efficacy of the application is demonstrated in the study of the Fe-Ti-Sn ternary system, where it efficiently identified the presence of the Heusler phase. The integration of machine learning tools with traditional materials science approaches showcased in this study has the potential to drive groundbreaking advancements in materials exploration and discovery.
Publisher
Communications Materials
Published On
Jul 31, 2024
Authors
Ryo Tamura, Haruhiko Morito, Guillaume Deffrennes, Masanobu Naito, Yoshitaro Nose, Taichi Abe, Kei Terayama
Tags
AIPHAD
phase diagrams
artificial intelligence
active learning
material science
Heusler phase
machine learning
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