Phase Stability Through Machine Learning

被引:0
|
作者
Raymundo Arróyave
机构
[1] Texas A&M University,Department of Materials Science and Engineering
[2] Texas A&M University,Department of Mechanical Engineering
[3] Texas A&M University,Department of Industrial and Systems Engineering
关键词
active learning; machine learning; phase equilibria; phase diagrams; phase stability;
D O I
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中图分类号
学科分类号
摘要
Understanding the phase stability of a chemical system constitutes the foundation of materials science. Knowledge of the equilibrium state of a system under arbitrary thermodynamic conditions provides valuable information about the types of phases that are likely to be synthesized and how to get there. Accessing the phase diagram in a materials system provides one with the information necessary to design materials and microstructures with optimal properties. While the materials science community has long been focused on exploiting this knowledge to navigate the materials space, recent advances in machine learning (ML) and artificial intelligence (AI) have provided the community with novel ways of interrogating the materials thermodynamics space. This work presents some of the most recent advances in ML/AI applied to phase stability and thermodynamics of materials. Prof. John Morral always had a passion for understanding and teaching the fundamental characteristics of phase diagrams. This review is written to honor his memory.
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页码:606 / 628
页数:22
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