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马什哈德大都市空气中污染物的时空分析及健康风险:通过敏感性分析和机器学习获得的深入见解

Spatiotemporal analysis of airborne pollutants and health risks in Mashhad metropolis: enhanced insights through sensitivity analysis and machine learning.

作者信息

Ahmadian Fahimeh, Rajabi Saeed, Maleky Sobhan, Baghapour Mohammad Ali

机构信息

Student Research Committee, Shiraz University of Medical Sciences, Shiraz, Iran.

Department of Environmental Health Engineering, School of Health, Shiraz University of Medical Sciences, Shiraz, Iran.

出版信息

Environ Geochem Health. 2024 Dec 26;47(2):34. doi: 10.1007/s10653-024-02332-5.

DOI:10.1007/s10653-024-02332-5
PMID:39724450
Abstract

The study delved into an extensive assessment of outdoor air pollutant levels, focusing specifically on PM, SO, NO, and CO, across the Mashhad metropolis from 2017 to 2021. In tandem, it explored their intricate correlations with meteorological conditions and the consequent health risks posed. Employing EPA health risk assessment methods, the research delved into the implications of pollutant exposure on human health. Results unveiled average annual concentrations of PM, SO, NO, and CO, standing at 27.22 µg/m, 72.48 µg/m, 26.8 µg/m, and 2.06 mg/m, respectively. Intriguingly, PM displayed positive correlations with temperature and wind speed, while exhibiting negative associations with relative humidity and precipitation. Conversely, both SO and NO concentrations showcased negative correlations with temperature, relative humidity, wind speed, and precipitation. Furthermore, CO demonstrated negative relationships with both wind speed and precipitation. The analysis of mean hazard quotients (HQ) for PM and NO indicated values exceeding 1 under 8- and 12-h exposure scenarios, pointing towards concerning health risks. Spatial distribution revealed elevated CO levels in the northwest, north, and east areas, while NO concentrations were predominant in the north and south regions. Through Sobol sensitivity analysis, PM, EF, and NO emerged as pivotal influencers, offering valuable insights for refining environmental models and formulating effective pollution mitigation strategies. Air pollution index (AQI) forecasting was modeled using advanced machine learning comprising Random Forest (RF), Decision Tree (DT), K-Nearest Neighbors (KKN), and Naive Bayesian (NB). Results showed that the RF model with the highest accuracy (R = 0.99) was the best prediction model.

摘要

该研究深入全面地评估了2017年至2021年期间马什哈德市的室外空气污染物水平,特别关注了颗粒物(PM)、二氧化硫(SO)、氮氧化物(NO)和一氧化碳(CO)。同时,研究探讨了它们与气象条件的复杂关系以及由此带来的健康风险。采用美国环境保护局(EPA)的健康风险评估方法,该研究深入探究了污染物暴露对人类健康的影响。结果显示,PM、SO、NO和CO的年均浓度分别为27.22微克/立方米、72.48微克/立方米、26.8微克/立方米和2.06毫克/立方米。有趣的是,PM与温度和风速呈正相关,而与相对湿度和降水量呈负相关。相反,SO和NO的浓度与温度、相对湿度、风速和降水量均呈负相关。此外,CO与风速和降水量均呈负相关。对PM和NO的平均危害商(HQ)分析表明,在8小时和12小时暴露情景下,其值超过1,这表明存在令人担忧的健康风险。空间分布显示,西北部、北部和东部地区的CO水平升高,而北部和南部地区的NO浓度较高。通过索博尔(Sobol)敏感性分析,PM、排放因子(EF)和NO成为关键影响因素,为完善环境模型和制定有效的污染缓解策略提供了有价值的见解。使用包括随机森林(RF)、决策树(DT)、K近邻(KKN)和朴素贝叶斯(NB)在内的先进机器学习对空气污染指数(AQI)进行了预测建模。结果表明,准确率最高(R = 0.99)的RF模型是最佳预测模型。

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