4-14、Accelerated search for materials with targeted properties by machine learning and adaptive design

Accelerated search for materials with targeted properties by machine learning and adaptive design

Dezhen Xue*,1, Xiangdong Ding1, Jun Sun1 and Turab Lookman2

1 State Key Laboratory for Mechanical Behavior of Materials, Xi'an Jiaotong University, Xi'an 710049, China

2 Theoretical Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, USA

Abstract

  Finding novel materials in an accelerated, yet cost effective manner that is not dependent on trial and error is one of the central goals of the U.S. Materials Genome Initiative. Learning from data is an attracting tool to accelerate the discovery of new materials. However, in addition to data, a distinguishing aspect of materials science is that there exists a substantial body of knowledge in the form of phenomenological models and physical theories. Here we focused on combining the informatics techniques and materials knowledge to further accelerated search for new materials with targeted properties. Two case studies include 1) using results from Landau–Devonshire theory to guide experiments in the design of new lead-free piezoelectrics with better temperature reliability; 2) using physical understanding to isolate possible global minimums of the search space to achieve a ferroelectric material with higher en

ergy storage density using as few experiments as possible. Our framework may offer the opportunity to significantly reduce the number of costly and time-consuming experiments.

 

       DOI: 10.12110/firstfmge.20171121.414

Brief Introduction of Speaker
薛德祯

西安交通大学材料科学与工程学院、金属材料强度国家重点实验室副教授。博士毕业于西安交通大学,获陕西省优秀博士论文;获得美国洛斯阿拉莫斯国家实验室院长博士后(director funded fellow)资助,进行三年博士后研究。主要研究方向是材料信息学,主要利用机器学习技术,研究缺陷对结构相变(铁电相变、马氏体相变等)的影响规律,实现铁性智能材料的高性能化,致力于材料学与信息学两个学科交叉领域的研究。迄今在Nat. Comm.,PNAS,Phys. Rev. Lett.,Phys. Rev. B.,Acta Mater.等期刊上发表论文56篇(以第一或通讯作者发表论文26篇)。相关的研究工作受到了国内外同行的关注,被Nature China,MRS Bulletin 等杂志专题评论。