Data mining-aided materials discovery and optimization
Recent developments in data mining-aided materials discovery and optimization are reviewed in this paper, and an introduction to the materials data mining (MDM) process is provided using case studies. Both qualitative and quantitative methods in machine learning can be adopted in the MDM process to...
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doaj-9cb47daf556243a8bc2a2178426fab4a2020-11-25T01:05:12ZengElsevierJournal of Materiomics2352-84782017-09-013319120110.1016/j.jmat.2017.08.003Data mining-aided materials discovery and optimizationWencong Lu0Ruijuan Xiao1Jiong Yang2Hong Li3Wenqing Zhang4Materials Genome Institute of Shanghai University, Shanghai Materials Genome Institute, Shanghai 200444, ChinaInstitute of Physics, Chinese Academy of Sciences, Beijing, ChinaMaterials Genome Institute of Shanghai University, Shanghai Materials Genome Institute, Shanghai 200444, ChinaInstitute of Physics, Chinese Academy of Sciences, Beijing, ChinaMaterials Genome Institute of Shanghai University, Shanghai Materials Genome Institute, Shanghai 200444, ChinaRecent developments in data mining-aided materials discovery and optimization are reviewed in this paper, and an introduction to the materials data mining (MDM) process is provided using case studies. Both qualitative and quantitative methods in machine learning can be adopted in the MDM process to accomplish different tasks in materials discovery, design, and optimization. State-of-the-art techniques in data mining-aided materials discovery and optimization are demonstrated by reviewing the controllable synthesis of dendritic Co3O4 superstructures, materials design of layered double hydroxide, battery materials discovery, and thermoelectric materials design. The results of the case studies indicate that MDM is a powerful approach for use in materials discovery and innovation, and will play an important role in the development of the Materials Genome Initiative and Materials Informatics.http://www.sciencedirect.com/science/article/pii/S2352847817300618Data miningMaterials designCo3O4 superstructuresLayered double hydroxideBattery materialsThermoelectric materialsMaterials genome initiative |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wencong Lu Ruijuan Xiao Jiong Yang Hong Li Wenqing Zhang |
spellingShingle |
Wencong Lu Ruijuan Xiao Jiong Yang Hong Li Wenqing Zhang Data mining-aided materials discovery and optimization Journal of Materiomics Data mining Materials design Co3O4 superstructures Layered double hydroxide Battery materials Thermoelectric materials Materials genome initiative |
author_facet |
Wencong Lu Ruijuan Xiao Jiong Yang Hong Li Wenqing Zhang |
author_sort |
Wencong Lu |
title |
Data mining-aided materials discovery and optimization |
title_short |
Data mining-aided materials discovery and optimization |
title_full |
Data mining-aided materials discovery and optimization |
title_fullStr |
Data mining-aided materials discovery and optimization |
title_full_unstemmed |
Data mining-aided materials discovery and optimization |
title_sort |
data mining-aided materials discovery and optimization |
publisher |
Elsevier |
series |
Journal of Materiomics |
issn |
2352-8478 |
publishDate |
2017-09-01 |
description |
Recent developments in data mining-aided materials discovery and optimization are reviewed in this paper, and an introduction to the materials data mining (MDM) process is provided using case studies. Both qualitative and quantitative methods in machine learning can be adopted in the MDM process to accomplish different tasks in materials discovery, design, and optimization. State-of-the-art techniques in data mining-aided materials discovery and optimization are demonstrated by reviewing the controllable synthesis of dendritic Co3O4 superstructures, materials design of layered double hydroxide, battery materials discovery, and thermoelectric materials design. The results of the case studies indicate that MDM is a powerful approach for use in materials discovery and innovation, and will play an important role in the development of the Materials Genome Initiative and Materials Informatics. |
topic |
Data mining Materials design Co3O4 superstructures Layered double hydroxide Battery materials Thermoelectric materials Materials genome initiative |
url |
http://www.sciencedirect.com/science/article/pii/S2352847817300618 |
work_keys_str_mv |
AT wenconglu dataminingaidedmaterialsdiscoveryandoptimization AT ruijuanxiao dataminingaidedmaterialsdiscoveryandoptimization AT jiongyang dataminingaidedmaterialsdiscoveryandoptimization AT hongli dataminingaidedmaterialsdiscoveryandoptimization AT wenqingzhang dataminingaidedmaterialsdiscoveryandoptimization |
_version_ |
1725195661891076096 |