Machine-learning analysis to predict the fluorescence quantum yield of carbon quantum dots in biochar.

IF 8.2 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Jiao Chen, Mengqian Zhang, Zijun Xu, Ruoxin Ma, Qingdong Shi
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引用次数: 1

Abstract

Biochar nanoparticles have recently attracted attention, owing to their environmental behavior and ecological effects. However, biochar has not been shown to contain carbon quantum dots (< 10 nm) with unique photovoltaic properties. Therefore, this study utilized several characterization techniques to demonstrate the generation of carbon quantum dots in biochar produced from 10 types of farm waste. The generated carbon quantum dots had a quasi-spherical morphology and high-resolution lattice stripes with lattice spacings of 0.20-0.23 nm. Moreover, they contained functional groups with good hydrophilic properties, such as amino and hydroxyl groups, and elemental O, C, and N on the surface. A crucial determinant of the photoluminescence properties of carbon quantum dots is their fluorescence quantum yield. Therefore, the relationship between the biochar preparation parameters and the fluorescence quantum yield was investigated using six machine learning analytical models based on 480 samples. Among the models, the gradient-boosting decision-tree regression model exhibited the best predictive performance (R2 > 0.9, RMSE <0.02, and MAPE <3), and was used for the analysis of feature importance; compared to the properties of the raw material, the production parameters had a greater effect on the fluorescence quantum yield. Additionally, four key features were identified: pyrolysis temperature, residence time, N content, and C/N ratio, which were independent of farm waste type. These features can be used to accurately predict the fluorescence quantum yield of carbon quantum dots in biochar. The relative error range between the predicted and the experimental value of fluorescence quantum yield is 0.00-4.60 %. Thus, the prediction model has the potential to predict the fluorescence quantum yield of carbon quantum dots in other types of farm waste biochar, and provides fundamental information for the study of biochar nanoparticles.

机器学习分析预测生物炭中碳量子点的荧光量子产率。
生物炭纳米粒子由于其环境行为和生态效应,最近引起了人们的关注。然而,生物炭尚未被证明含有具有独特光伏特性的碳量子点(<10nm)。因此,本研究利用了几种表征技术来证明由10种类型的农场废物生产的生物炭中碳量子点的产生。生成的碳量子点具有准球形形貌和高分辨率的晶格条纹,晶格间距为0.20-0.23nm。此外,它们表面含有氨基和羟基等亲水性良好的官能团,以及元素O、C和N。碳量子点的光致发光特性的一个关键决定因素是它们的荧光量子产率。因此,基于480个样本,使用六个机器学习分析模型研究了生物炭制备参数与荧光量子产率之间的关系。在这些模型中,梯度提升决策树回归模型表现出最好的预测性能(R2>0.9,RMSE
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来源期刊
Science of the Total Environment
Science of the Total Environment 环境科学-环境科学
CiteScore
17.60
自引率
10.20%
发文量
8726
审稿时长
2.4 months
期刊介绍: The Science of the Total Environment is an international journal dedicated to scientific research on the environment and its interaction with humanity. It covers a wide range of disciplines and seeks to publish innovative, hypothesis-driven, and impactful research that explores the entire environment, including the atmosphere, lithosphere, hydrosphere, biosphere, and anthroposphere. The journal's updated Aims & Scope emphasizes the importance of interdisciplinary environmental research with broad impact. Priority is given to studies that advance fundamental understanding and explore the interconnectedness of multiple environmental spheres. Field studies are preferred, while laboratory experiments must demonstrate significant methodological advancements or mechanistic insights with direct relevance to the environment.
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