Influence of spatial resolution on population PM2.5 exposure and health impacts

被引:0
作者
Antti Korhonen
Heli Lehtomäki
Isabell Rumrich
Niko Karvosenoja
Ville-Veikko Paunu
Kaarle Kupiainen
Mikhail Sofiev
Yuliia Palamarchuk
Jaakko Kukkonen
Leena Kangas
Ari Karppinen
Otto Hänninen
机构
[1] National Institute for Health and Welfare (THL),Department of Public Health Solutions
[2] University of Eastern Finland (UEF),Department of Environmental and Biological Sciences
[3] University of Eastern Finland (UEF),Faculty of Health Sciences, School of Pharmacy
[4] Finnish Environmental Institute (SYKE),undefined
[5] Finnish Meteorological Institute (FMI),undefined
来源
Air Quality, Atmosphere & Health | 2019年 / 12卷
关键词
Air quality model; FRES; SILAM; Particulate matter; PM; Resolution; Exposure; Mortality;
D O I
暂无
中图分类号
学科分类号
摘要
Health effect estimates depend on the methods of evaluating exposures. Due to non-linearities in the exposure-response relationships, both the predicted mean exposures as well as its spatial variability are significant. The aim of this work is to systematically quantify the impact of the spatial resolution on population-weighted mean concentration (PWC), its variance, and mortality attributable to fine particulate matter (PM2.5) exposure in Finland in 2015. The atmospheric chemical transport model SILAM was used to estimate the ambient air PM2.5 concentrations at 0.02° longitudinal × 0.01° latitudinal resolution (ca. 1 km), including both the national PM2.5 emissions and the long-range transport. The decision-support model FRES source-receptor matrices applied at 250-m resolution was used to model the ambient air concentrations of primary fine particulate matter (PPM2.5) from local and regional sources up to 10 km and 20 km distances. Numerical averaging of population and concentrations was used to produce the results for coarser resolutions. Population-weighted PM2.5 concentration was 11% lower at a resolution of 50 km, compared with the corresponding computations at a resolution of 1 km. However, considering only the national emissions, the influences of spatial averaging were substantially larger. The average population-weighted local PPM2.5 concentration originated from Finnish sources was 70% lower at a resolution of 50 km, compared with the corresponding result obtained using a resolution of 250 m. The sensitivity to spatial averaging, between the finest 250-m and the coarsest 50-km resolution, was highest for the emissions of PPM2.5 originated from national vehicular traffic (about 80% decrease) and lowest for the national residential combustion (60% decrease). Exposure estimates in urban areas were more sensitive to the changes of model resolution (14% and 74% decrease for PM2.5 and local PPM2.5, respectively), compared with estimates in rural areas (2% decrease for PM2.5 and 36% decrease for PPM2.5). We conclude that for the evaluation of the health impacts of air pollution, the resolution of the model computations is an important factor, which can potentially influence the predicted health impacts by tens of percent or more, especially when assessing the impacts of national emissions.
引用
收藏
页码:705 / 718
页数:13
相关论文
共 948 条
[1]  
Beelen R(2014)Effects of long-term exposure to air pollution on natural-cause mortality: an analysis of 22 European cohorts within the multicentre ESCAPE project Lancet (London, England) 383 785-795
[2]  
Raaschou-Nielsen O(2014)An integrated risk function for estimating the global burden of disease attributable to ambient fine particulate matter exposure Environ Health Perspect 122 397-403
[3]  
Stafoggia M(2014)Frontiers in air quality modelling Geosci Model Dev 7 203-210
[4]  
Andersen ZJ(2016)Development of West-European PM2.5 and NO2 land use regression models incorporating satellite-derived and chemical transport modelling data Environ Res 151 1-10
[5]  
Weinmayr G(2018)The influence of model spatial resolution on simulated ozone and fine particulate matter for Europe: implications for health impact assessments Atmos Chem Phys 18 5765-5784
[6]  
Hoffmann B(2013)Impact of grid resolution on the predicted fine PM by a regional 3-D chemical transport model Atmos Environ 68 24-32
[7]  
Wolf K(2017)Global, regional, and national comparative risk assessment of 84 behavioural, environmental and occupational, and metabolic risks or clusters of risks, 1990-2016: a systematic analysis for the Global Burden of Disease Study 2016 Lancet (London, England) 390 1345-1422
[8]  
Samoli E(2015)Quantifying the health impacts of ambient air pollutants: recommendations of a WHO/Europe project Int J Public Health 60 619-627
[9]  
Fischer P(2005)Characterization of model error in a simulation of fine particulate matter exposure distributions of the working age population in Helsinki, Finland J Air Waste Manag Assoc 55 446-457
[10]  
Nieuwenhuijsen M(2014)A comprehensive inventory of the ship traffic exhaust emissions in the Baltic Sea from 2006 to 2009 Ambio 43 311-324