基于 PM2.5 浓度和气象变量的机器学习重金属浓度预测方法建议

IF 1.1 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Asian Journal of Atmospheric Environment Pub Date : 2024-02-27 DOI:10.1007/s44273-024-00029-w
Shin-Young Park, Hye-Won Lee, Jaymin Kwon, Sung-Won Yoon, Cheol-Min Lee
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引用次数: 0

摘要

在这项研究中,我们利用 PM2.5 浓度和气象变量建立了重金属浓度预测模型。数据收集自五个地点,包括气象因素、PM2.5 和 18 种金属,历时两年。研究采用了四种分析方法:多元线性回归(MLR)、随机森林回归(RFR)、梯度提升和人工神经网络(ANN)。RFR 是大多数金属的最佳预测方法,梯度提升和人工神经网络则是某些金属(如铝、铜、砷、钼、锌和镉)的最佳预测方法。在根据实际测量结果评估最终模型的预测值时,发现锰、铁、铜、钡和铅在不同测量地点的浓度分布存在差异,这表明不同地点的预测性能各不相同。此外,铝、砷、镉和钡在不同季节的预测性能也存在显著差异。所开发的模型有望克服测量和分析重金属浓度的技术限制。该模型还可用于获取基础数据,以研究接触重金属等有害物质对健康的影响。
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Proposal of a methodology for prediction of heavy metals concentration based on PM2.5 concentration and meteorological variables using machine learning

In this study, we developed a prediction model for heavy metal concentrations using PM2.5 concentrations and meteorological variables. Data was collected from five sites, encompassing meteorological factors, PM2.5, and 18 metals over 2 years. The study employed four analytical methods: multiple linear regression (MLR), random forest regression (RFR), gradient boosting, and artificial neural networks (ANN). RFR was the best predictor for most metals, and gradient boosting and ANN were optimal for certain metals like Al, Cu, As, Mo, Zn, and Cd. Upon evaluating the final model’s predicted values against the actual measurements, differences in the concentration distribution between measurement locations were observed for Mn, Fe, Cu, Ba, and Pb, indicating varying prediction performances among sites. Additionally, Al, As, Cd, and Ba showed significant differences in prediction performance across seasons. The developed model is expected to overcome the technical limitations involved in measuring and analyzing heavy metal concentrations. It could further be utilized to obtain fundamental data for studying the health effects of exposure to hazardous substances such as heavy metals.

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来源期刊
Asian Journal of Atmospheric Environment
Asian Journal of Atmospheric Environment METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
2.80
自引率
6.70%
发文量
22
审稿时长
21 weeks
期刊最新文献
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