Literature DB >> 33437586

Determining Multi-Component Phase Diagrams with Desired Characteristics Using Active Learning.

Yuan Tian1, Ruihao Yuan1, Dezhen Xue1, Yumei Zhou1, Yunfan Wang1, Xiangdong Ding1, Jun Sun1, Turab Lookman2.   

Abstract

Herein, we demonstrate how to predict and experimentally validate phase diagrams for multi-component systems from a high-dimensional virtual space of all possible phase diagrams involving several elements based on small existing experimental data. The experimental data for bulk phases for known systems represents a sampling from this space, and screening the space allows multi-component phase diagrams with given design criteria to be built. This approach uses machine learning methods to predict phase diagrams and Bayesian experimental design to minimize experiments for refinement and validation, all within an active learning loop. The approach is proven by predicting and synthesizing the ferroelectric ceramic system (1-ω)(Ba0.61Ca0.28Sr0.11TiO3)-ω(BaTi0.888Zr0.0616Sn0.0028Hf0.0476O3) with a relatively high transition temperature and triple point, as well as the NiTi-based pseudo-binary phase diagram (1-ω)(Ti0.309Ni0.485Hf0.20Zr0.006)-ω(Ti0.309Ni0.485Hf0.07Zr0.068Nb0.068) designed for high transition temperature (ω ⩽ 1). Each phase diagram is validated and optimized through only three new experiments. The complexity of these compounds is beyond the reach of today's computational methods.
© 2020 The Authors. Published by Wiley‐VCH GmbH.

Entities:  

Keywords:  Bayesian optimization; ferroelectrics; machine learning; materials informatics; multi‐component phase diagrams; shape memory alloys

Year:  2020        PMID: 33437586      PMCID: PMC7788591          DOI: 10.1002/advs.202003165

Source DB:  PubMed          Journal:  Adv Sci (Weinh)        ISSN: 2198-3844            Impact factor:   16.806


  15 in total

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4.  Efficient Phase Diagram Sampling by Active Learning.

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8.  Accelerated search for materials with targeted properties by adaptive design.

Authors:  Dezhen Xue; Prasanna V Balachandran; John Hogden; James Theiler; Deqing Xue; Turab Lookman
Journal:  Nat Commun       Date:  2016-04-15       Impact factor: 14.919

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Authors:  Qiang Zhu; Amit Samanta; Bingxi Li; Robert E Rudd; Timofey Frolov
Journal:  Nat Commun       Date:  2018-02-01       Impact factor: 14.919

10.  Accelerated discovery of stable lead-free hybrid organic-inorganic perovskites via machine learning.

Authors:  Shuaihua Lu; Qionghua Zhou; Yixin Ouyang; Yilv Guo; Qiang Li; Jinlan Wang
Journal:  Nat Commun       Date:  2018-08-24       Impact factor: 14.919

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  1 in total

1.  Using Feature-Assisted Machine Learning Algorithms to Boost Polarity in Lead-Free Multicomponent Niobate Alloys for High-Performance Ferroelectrics.

Authors:  Seung-Hyun Victor Oh; Woohyun Hwang; Kwangrae Kim; Ji-Hwan Lee; Aloysius Soon
Journal:  Adv Sci (Weinh)       Date:  2022-03-06       Impact factor: 17.521

  1 in total

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