Discovery and Optimization of Materials Using Evolutionary Approaches

被引:150
作者
Le, Tu C. [1 ]
Winkler, David A. [1 ,2 ,3 ,4 ]
机构
[1] CSIRO Mfg, Bag 10, Clayton, Vic 3169, Australia
[2] Monash Inst Pharmaceut Sci, 381 Royal Parade, Parkville, Vic 3052, Australia
[3] La Trobe Univ, Latrobe Inst Mol Sci, Bundoora, Vic 3046, Australia
[4] Flinders Univ S Australia, Sch Chem & Phys Sci, Bedford Pk, SA 5042, Australia
关键词
ARTIFICIAL NEURAL-NETWORK; PARAFFIN ISOMERIZATION CATALYSTS; MULTIOBJECTIVE GENETIC ALGORITHM; ASSISTED COMBINATORIAL SEARCH; NATURE-INSPIRED TOOL; HIGH-THROUGHPUT; METHANOL SYNTHESIS; OXIDATIVE DEHYDROGENATION; LUMINESCENCE PROPERTIES; PREFERENTIAL OXIDATION;
D O I
10.1021/acs.chemrev.5b00691
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Materials science is undergoing a revolution, generating valuable new materials such as flexible solar panels, biomaterials and printable tissues, new catalysts, polymers, and porous materials with unprecedented properties. However, the number of potentially accessible materials is immense. Artificial evolutionary methods such as genetic algorithms, which explore large, complex search spaces very efficiently, can be applied to the identification and optimization of novel materials more rapidly than by physical experiments alone. Machine learning models can augment experimental measurements of materials fitness to accelerate identification of useful and novel materials in vast materials composition or property spaces. This review discusses the problems of large materials spaces, the types of evolutionary algorithms employed to identify or optimize materials, and how materials can be represented mathematically as genomes, describes fitness landscapes and mutation operators commonly employed in materials evolution, and provides a comprehensive summary of published research on the use of evolutionary methods to generate new catalysts, phosphors, and a range of other materials. The review identifies the potential for evolutionary methods to revolutionize medical, and materials based industries.
引用
收藏
页码:6107 / 6132
页数:26
相关论文
共 92 条
[21]   Optimizing core-shell nanoparticle catalysts with a genetic algorithm [J].
Froemming, Nathan S. ;
Henkelman, Graeme .
JOURNAL OF CHEMICAL PHYSICS, 2009, 131 (23)
[22]   Resonances On-Demand for Plasmonic Nano-Particles [J].
Ginzburg, Pavel ;
Berkovitch, Nikolai ;
Nevet, Amir ;
Shor, Itay ;
Orenstein, Meir .
NANO LETTERS, 2011, 11 (06) :2329-2333
[23]   On the Suitability of Different Representations of Solid Catalysts for Combinatorial Library Design by Genetic Algorithms [J].
Gobin, Oliver C. ;
Schueth, Ferdi .
JOURNAL OF COMBINATORIAL CHEMISTRY, 2008, 10 (06) :835-846
[24]  
GOLDBERG DE, 1989, PROCEEDINGS OF THE THIRD INTERNATIONAL CONFERENCE ON GENETIC ALGORITHMS, P80
[25]  
Goldberg DE., 1989, GENETIC ALGORITHMS S, V1
[26]   Evolution of oil droplets in a chemorobotic platform [J].
Gutierrez, Juan Manuel Parrilla ;
Hinkley, Trevor ;
Taylor, James Ward ;
Yanev, Kliment ;
Cronin, Leroy .
NATURE COMMUNICATIONS, 2014, 5
[27]   Characterization and properties of green-emitting β-SiAlON:Eu2+ powder phosphors for white light-emitting diodes -: art. no. 211905 [J].
Hirosaki, N ;
Xie, RJ ;
Kimoto, K ;
Sekiguchi, T ;
Yamamoto, Y ;
Suehiro, T ;
Mitomo, M .
APPLIED PHYSICS LETTERS, 2005, 86 (21) :1-3
[28]  
Hirose K., 2003, INTRO TAGUCHI METHOD
[29]  
Holland JH., 1992, ADAPTATION NATURAL A, DOI [10.7551/mitpress/1090.001.0001, DOI 10.7551/MITPRESS/1090.001.0001]
[30]   Catalyst design for methane oxidative coupling by using artificial neural network and hybrid genetic algorithm [J].
Huang, K ;
Zhan, XL ;
Chen, FQ ;
Lü, DW .
CHEMICAL ENGINEERING SCIENCE, 2003, 58 (01) :81-87