Machine learning-assisted colloidal synthesis: A review

被引:9
|
作者
Gulevich, D. G. [1 ]
Nabiev, I. R. [1 ,2 ,3 ,4 ]
Samokhvalov, P. S. [1 ,2 ]
机构
[1] Natl Res Nucl Univ MEPhI, Moscow Engn Phys Inst, Lab Nanobioengn, Moscow 115409, Russia
[2] Life Improvement Future Technol LIFT Ctr, Moscow 143025, Russia
[3] Univ Reims, Lab Rech Nanosci, LRN EA4682, 51 rue Cognacq Jay, F-51100 Reims, France
[4] Sechenov Univ, Sechenov First Moscow State Med Univ, Inst Mol Med, Dept Clin Immunol & Allergol, Moscow 119146, Russia
基金
俄罗斯科学基金会;
关键词
Colloidal nanomaterials; Machine learning; Hot -injection synthesis; Hydrothermal synthesis; Chemical reduction; ORGANIC-INORGANIC PEROVSKITES; LEAD HALIDE PEROVSKITES; SUPPORT VECTOR MACHINE; ONE-POT SYNTHESIS; QUANTUM DOTS; SHAPE-CONTROL; NEURAL-NETWORK; PATTERN-CLASSIFICATION; NANOCRYSTAL GROWTH; OPTICAL-PROPERTIES;
D O I
10.1016/j.mtchem.2023.101837
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Artificial intelligence (AI) technologies, including machine learning and deep learning, have become ingrained in both everyday life and in scientific research. In chemistry, these algorithms are most commonly used for the development of new materials and drugs, recognition of microscopy images, and analysis of spectral data. Finding relationships between the parameters of chemical synthesis and the properties of the resultant materials is often challenging because of the large number of variations of the temperature and time of synthesis, the chemical composition and ratio of precursors, etc. Applying machine and deep learning to the organization of chemical experiments will considerably reduce the empiricism issues in chemical research. Colloidal nanomaterials, whose morphology, size, and phase composition are influenced directly not only by the synthesis conditions, but the reagents or solvents purity and other indistinct factors are highly demanded in optoelectronics, catalysis, biological imaging, and sensing applications. In recent years, AI methods have been increasingly used for determining the key factors of synthesis and selecting the optimal reaction conditions for obtaining nanomaterials with precisely controlled and reproducible characteristics. The purpose of this review is to analyze the current progress in the AI-assisted optimization of the most common methods of production of colloidal nanomaterials, including colloidal and hydrothermal syntheses, chemical reduction, and synthesis in flow reactors.
引用
收藏
页数:15
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