Accelerating materials discovery using machine learning

被引:10
作者
Yongfei Juan [1 ]
Yongbing Dai [1 ]
Yang Yang [2 ]
Jiao Zhang [1 ]
机构
[1] Shanghai Key Lab of Advanced High-temperature Materials and Precision Forming, Shanghai Jiao Tong University
[2] Department of Computer Science and Engineering, Shanghai Jiao Tong University
关键词
Materials discovery; Materials design; Materials properties prediction; Machine learning; Data-driven;
D O I
暂无
中图分类号
TB30 [工程材料一般性问题]; TP181 [自动推理、机器学习];
学科分类号
0805 ; 080502 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
The discovery of new materials is one of the driving forces to promote the development of modern society and technology innovation, the traditional materials research mainly depended on the trial-anderror method, which is time-consuming and laborious. Recently, machine learning(ML) methods have made great progress in the researches of materials science with the arrival of the big-data era, which gives a deep revolution in human society and advance science greatly. However, there exist few systematic generalization and summaries about the applications of ML methods in materials science. In this review,we first provide a brief account of the progress of researches on materials science with ML employed, the main ideas and basic procedures of this method are emphatically introduced. Then the algorithms of ML which were frequently used in the researches of materials science are classified and compared. Finally,the recent meaningful applications of ML in metal materials, battery materials, photovoltaic materials and metallic glass are reviewed.
引用
收藏
页码:178 / 190
页数:13
相关论文
共 123 条
[1]   A data-driven framework to predict the morphology of interfacial Cu6Sn5 IMC in SAC/Cu system during laser soldering [J].
Anil Kunwar ;
Lili An ;
Jiahui Liu ;
Shengyan Shang ;
Peter Rback ;
Haitao Ma ;
Xueguan Song .
JournalofMaterialsScience&Technology, 2020, 50 (15) :115-127
[2]  
Designing Rules of Laser-Clad High-Entropy Alloy Coatings with Simple Solid Solution Phases[J]. Yongfei Juan,Jiao Zhang,Yongbing Dai,Qing Dong,Yanfeng Han.Acta Metallurgica Sinica(English Letters). 2020(08)
[3]   Thermodynamics and kinetics of phase transformation in rare earth–magnesium alloys: A critical review [J].
Qun Luo ;
Yanlin Guo ;
Bin Liu ;
Yujun Feng ;
Jieyu Zhang ;
Qian Li ;
Kuochih Chou .
Journal of Materials Science & Technology, 2020, 44 (09) :171-190
[4]   Predictingtheonsettemperature(Tg)ofGexSe1-xglasstransition:afeatureselectionbasedtwo-stagesupportvectorregressionmethod [J].
Yue Liu ;
Junming Wu ;
Guang Yang ;
Tianlu Zhao ;
Siqi Shi .
Science Bulletin, 2019, 64 (16) :1195-1203
[5]   Density functional theory calculations:A powerful tool to simulate and design high-performance energy storage and conversion materials [J].
Xi Wu ;
Feiyu Kang ;
Wenhui Duan ;
Jia Li .
Progress in Natural Science:Materials International, 2019, 29 (03) :247-255
[6]  
Recent progress in the simulation of microstructure evolution in titanium alloys[J]. Jinhu Zhang,Xuexiong Li,Dongsheng Xu,Rui Yang.Progress in Natural Science:Materials International. 2019(03)
[7]  
BP neural network based flexural strength prediction of open-porous Cu-SnTi composites[J]. Biao Zhao,Tianyu Yu,Wenfeng Ding,Xianying Li,Honghua Su.Progress in Natural Science:Materials International. 2018(03)
[8]  
Predicting creep rupture life of Ni-based single crystal superalloys using divide-and-conquer approach based machine learning[J] . Yue Liu,Junming Wu,Zhichao Wang,Xiao-Gang Lu,Maxim Avdeev,Siqi Shi,Chongyu Wang,Tao Yu.Acta Materialia . 2020 (prep)
[9]   Classification of femur fracture in pelvic X-ray images using meta-learned deep neural network [J].
Lee, Changhwan ;
Jang, Jongseong ;
Lee, Seunghun ;
Kim, Young Soo ;
Jo, Hang Joon ;
Kim, Yeesuk .
SCIENTIFIC REPORTS, 2020, 10 (01)
[10]   Link distance-support vector regression (LD-SVR) based device free localization technique in indoor environment [J].
Anusha, K. S. ;
Ramanathan, R. ;
Jayakumar, M. .
ENGINEERING SCIENCE AND TECHNOLOGY-AN INTERNATIONAL JOURNAL-JESTECH, 2020, 23 (03) :483-493