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
[91]  
A novel methodology to explain and evaluate data-driven building energy performance models based on interpretable machine learning[J] . Cheng Fan,Fu Xiao,Chengchu Yan,Chengliang Liu,Zhengdao Li,Jiayuan Wang.Applied Energy . 2019
[92]  
Modified criterions for phase prediction in the multi-component laser-clad coatings and investigations into microstructural evolution/wear resistance of FeCrCoNiAlMox laser-clad coatings[J] . Y.F. Juan,J. Li,Y.Q. Jiang,W.L. Jia,Z.J. Lu.Applied Surface Science . 2019
[93]  
Machine learning in medicine: Performance calculation of dementia prediction by support vector machines (SVM)[J] . Gopi Battineni,Nalini Chintalapudi,Francesco Amenta.Informatics in Medicine Unlocked . 2019
[94]  
An Optimized Support Vector Machine (SVM) based on Particle Swarm Optimization (PSO) for Cryptocurrency Forecasting[J] . Hitam Nor Azizah,Ismail Amelia Ritahani,Saeed Faisal.Procedia Computer Science . 2019 (C)
[95]   Physical descriptor for the Gibbs energy of inorganic crystalline solids and temperature-dependent materials chemistry [J].
Bartel, Christopher J. ;
Millican, Samantha L. ;
Deml, Ann M. ;
Rumptz, John R. ;
Tumas, William ;
Weimer, Alan W. ;
Lany, Stephan ;
Stevanovic, Vladan ;
Musgrave, Charles B. ;
Holder, Aaron M. .
NATURE COMMUNICATIONS, 2018, 9
[96]  
Multivariate modeling via artificial neural network applied to enhance methylene blue sorption using graphene-like carbon material prepared from edible sugar[J] . Lakshmi Prasanna Lingamdinne,Jiwan Singh,Jong-Soo Choi,Yoon-Young Chang,Jae-Kyu Yang,Rama Rao Karri,Janardhan Reddy Koduru.Journal of Molecular Liquids . 2018
[97]  
Applications of machine learning for facies and fracture prediction using Bayesian Network Theory and Random Forest: Case studies from the Appalachian basin, USA[J] . Shuvajit Bhattacharya,Srikanta Mishra.Journal of Petroleum Science and Engineering . 2018
[98]  
Managing the computational cost of model selection and cross-validation in extreme learning machines via Cholesky, SVD, QR and eigen decompositions[J] . Yiannis Kokkinos,Konstantinos G. Margaritis.Neurocomputing . 2018
[99]  
OCPMDM: Online computation platform for materials data mining[J] . Qing Zhang,Dongping Chang,Xiuyun Zhai,Wencong Lu.Chemometrics and Intelligent Laboratory Systems . 2018
[100]  
Materials data validation and imputation with an artificial neural network[J] . P.C. Verpoort,P. MacDonald,G.J. Conduit.Computational Materials Science . 2018