PM2.5 exceedances and source appointment as inputs for an early warning system
-
Published:2022-02-22
Issue:12
Volume:44
Page:4569-4593
-
ISSN:0269-4042
-
Container-title:Environmental Geochemistry and Health
-
language:en
-
Short-container-title:Environ Geochem Health
Author:
Rincon Gladys,Morantes Quintana Giobertti,Gonzalez Ahilymar,Buitrago Yudeisy,Gonzalez Jean Carlos,Molina Constanza,Jones Benjamin
Abstract
AbstractBetween June 2018 and April 2019, a sampling campaign was carried out to collect PM2.5, monitoring meteorological parameters and anthropogenic events in the Sartenejas Valley, Venezuela. We develop a logistic model for PM2.5 exceedances (≥ 12.5 µg m−3). Source appointment was done using elemental composition and morphology of PM by scanning electron microscopy coupled with energy dispersive spectroscopy (SEM–EDS). A proposal of an early warning system (EWS) for PM pollution episodes is presented. The logistic model has a holistic success rate of 94%, with forest fires and motor vehicle flows as significant variables. Source appointment analysis by occurrence of events showed that samples with higher concentrations of PM had carbon-rich particles and traces of K associated with biomass burning, as well as aluminosilicates and metallic elements associated with resuspension of soil dust by motor-vehicles. Quantitative source appointment analysis showed that soil dust, garbage burning/marine aerosols and wildfires are three majority sources of PM. An EWS for PM pollution episodes around the Sartenejas Valley is proposed considering the variables and elements mentioned.
Funder
Fondo Nacional de Ciencia Tecnología e Innovación
Publisher
Springer Science and Business Media LLC
Subject
Geochemistry and Petrology,General Environmental Science,Water Science and Technology,Environmental Chemistry,General Medicine,Environmental Engineering
Reference132 articles.
1. Almeida, S. M., Pio, C. A., Freitas, M. C., Reis, M. A., & Trancoso, M. A. (2006). Approaching PM2.5 and PM2.5−10 source apportionment by mass balance analysis, principal component analysis and particle size distribution. Science of the Total Environment, 368(2), 663–674. 2. Alvarado, S. A., Silva, C. S., & Cáceres, D. D. (2010). Modelación de episodios críticos de contaminación por material particulado (PM10) en Santiago de Chile. Comparación de la eficiencia predictiva de los modelos paramétricos y no paramétricos. Gaceta Sanitaria, 24(6), 466–472. 3. Amato, F., Alastuey, A., De La Rosa, J., Gonzalez Castanedo, Y., Sánchez de la Campa, A. M., Pandolfi, M., & Querol, X. (2014). Trends of road dust emissions contributions on ambient air particulate levels at rural, urban and industrial sites in southern Spain. Atmospheric Chemistry and Physics, 14(7), 3533–3544. 4. Amato, F., Pandolfi, M., Escrig, A., Querol, X., Alastuey, A., Pey, J., & Hopke, P. K. (2009). Quantifying road dust resuspension in urban environment by multilinear engine: A comparison with PMF2. Atmospheric Environment, 43(17), 2770–2780. 5. Amici, S., Wooster, M. J., & Piscini, A. (2011). Multi-resolution spectral analysis of wildfire potassium emission signatures using laboratory, airborne and spaceborne remote sensing. Remote Sensing of Environment, 115(8), 1811–1823. https://doi.org/10.1016/j.rse.2011.02.022
Cited by
7 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|