Synthesis of carbon dots with predictable photoluminescence by the aid of machine learning

被引:0
|
作者
Chenyu Xing
Gaoyu Chen
Xia Zhu
Jiakun An
Jianchun Bao
Xuan Wang
Xiuqing Zhou
Xiuli Du
Xiangxing Xu
机构
[1] Nanjing Normal University,Jiangsu Key Laboratory of Biofunctional Materials, Jiangsu Key Laboratory of New Power Batteries, School of Chemistry and Materials Science
[2] Nanjing Normal University,School of Mathematical Sciences
[3] Nanjing University,State Key Laboratory of Coordination Chemistry, School of Chemistry and Chemical Engineering
来源
Nano Research | 2024年 / 17卷
关键词
carbon dots (CDs); synthesis; photoluminescence (PL); machine learning (ML); PL prediction;
D O I
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中图分类号
学科分类号
摘要
Carbon dots (CDs) have wide application potentials in optoelectronic devices, biology, medicine, chemical sensors, and quantum techniques due to their excellent fluorescent properties. However, synthesis of CDs with controllable spectrum is challenging because of the diversity of the CD components and structures. In this report, machine learning (ML) algorithms were applied to help the synthesis of CDs with predictable photoluminescence (PL) under the excitation wavelengths of 365 and 532 nm. The combination of precursors was used as the variable. The PL peaks of the strongest intensity (λs) and the longest wavelength (λl) were used as target functions. Among six investigated ML models, the random forest (RF) model showed outstanding performance in the prediction of the PL peaks.
引用
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页码:1984 / 1989
页数:5
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