材料科学
碳纤维
纳米材料
红外线的
纳米技术
近红外光谱
纳米结构
计算机科学
光谱特性
光学
复合数
物理
复合材料
天体物理学
作者
Vladislav S. Tuchin,Evgeniia A. Stepanidenko,Anna A. Vedernikova,Sergei A. Cherevkov,Di Li,Lei Li,Aaron Döring,Michal Otyepka,Elena V. Ushakova,Andrey L. Rogach
出处
期刊:Small
[Wiley]
日期:2024-02-11
卷期号:20 (29)
被引量:12
标识
DOI:10.1002/smll.202310402
摘要
Functional nanostructures build up a basis for the future materials and devices, providing a wide variety of functionalities, a possibility of designing bio-compatible nanoprobes, etc. However, development of new nanostructured materials via trial-and-error approach is obviously limited by laborious efforts on their syntheses, and the cost of materials and manpower. This is one of the reasons for an increasing interest in design and development of novel materials with required properties assisted by machine learning approaches. Here, the dataset on synthetic parameters and optical properties of one important class of light-emitting nanomaterials - carbon dots are collected, processed, and analyzed with optical transitions in the red and near-infrared spectral ranges. A model for prediction of spectral characteristics of these carbon dots based on multiple linear regression is established and verified by comparison of the predicted and experimentally observed optical properties of carbon dots synthesized in three different laboratories. Based on the analysis, the open-source code is provided to be used by researchers for the prediction of optical properties of carbon dots and their synthetic procedures.
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