Black carbon (BC) is an important component of atmospheric pollution and has significant impacts on air quality and human health. Choosing Shanghai city for a case study, this paper explores the statistical characteristics and spatial patterns of BC concentrations using a mobile monitoring method, which differs from traditional fixed-site observations. Land use regression (LUR) modeling was conducted to examine the determinants for on-road BC concentrations, e.g. population, economic development, traffic, etc. These results showed that the average on-road BC concentrations were (9.86±8.68) μg·m, with a significant spatial variation. BC concentrations in suburban areas[(10.47±2.04) μg·m] were 32.03% (2.54 μg·m) higher than those in the city center[(7.93±2.79) μg·m]. Besides, meteorological factors (e.g. wind speed and relative humidity) and traffic variables (e.g. the length of roads, distance to provincial roads, distance to highway) had significant effects on on-road BC concentrations (:0.5-0.7, <0.01). Moreover, the LUR model, including meteorological and traffic variables performed well (adjusted :0.62-0.75, cross validation :0.54-0.69, RMSE:0.15-0.20 μg·m), which demonstrates that on-road BC concentrations in Shanghai are mainly affected by these factors and traffic sources to some extent. Among them, the most accurate LUR model was developed with a 100 m buffer, followed by the LUR model with a 5 km buffer. This study is of great significance for the identification of spatial distribution patterns for on-road BC concentration and exploring their influencing factors in Shanghai, which can provide a scientific basis and theoretical support for simulating and predicting the response mechanisms of BC on human health and the natural environment.
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http://dx.doi.org/10.13227/j.hjkx.201705026 | DOI Listing |
Environ Pollut
January 2025
Institute for Risk Assessment Sciences, Utrecht University, Utrecht, The Netherlands.
Mobile air pollution measurements are typically aggregated by varying road segment lengths, grid cell sizes, and time intervals. How these spatiotemporal aggregation schemas affect the modeling performance of land use regression models has seldom been assessed. We used 5.
View Article and Find Full Text PDFHeliyon
December 2024
Graduate Program in Environmental Engineering, Federal University of Technology, Av. dos Pioneiros 3131, 86036-370, Londrina, PR, Brazil.
Monitoring air pollutants over time is essential for identifying and addressing trends, which may help improve air quality management and safeguard public health. This study investigates the spatio-temporal variability of air quality in the Metropolitan Area of Curitiba (MAC), Brazil, focusing on six pollutants (SO, NO, NOx, O, CO, and PM) measured at eight monitoring stations from 2003 to 2017. We conducted statistical analyses, including diurnal cycles, seasonal variability, spatio-temporal correlations, conditional bivariate probability functions, Theil-Sen trend analysis, and comparison with national quality standards (NAQS) and World Health Organization (WHO) guidelines.
View Article and Find Full Text PDFEnviron Monit Assess
November 2024
Grupo de Estudios de la Atmósfera y el Ambiente (GEAA), Facultad Regional Mendoza (UTN-FRM), Universidad Tecnológica Nacional, 5501, Mendoza City, Mendoza, Argentina.
Sci Data
November 2024
Department of Environmental Science and Engineering, Shanghai Key Laboratory of Atmospheric Particle Pollution and Prevention, Fudan University, Shanghai, 200433, China.
Particulate matter (PM) emissions from anthropogenic sources contribute substantially to air pollution. The unequal adverse health effects caused by source-emitted PM emphasize the need to consider the discrepancy of PM-bound chemicals rather than solely focusing on the mass concentration of PM when making air pollution control strategies. Here, we present a dataset about chemical compositions of real-world PM emissions from typical anthropogenic sources in China, including industrial (power, industrial boiler, iron & steel, cement, and other industrial process), residential (coal/biomass burning, and cooking), and transportation sectors (on-road vehicle, ship, and non-exhaust emission).
View Article and Find Full Text PDFGeohealth
November 2024
Department of Civil, Environmental, and Infrastructure Engineering College of Engineering and Computing George Mason University Fairfax VA USA.
Identifying sources of air pollution exposure is crucial for addressing their health impacts and associated inequities. Researchers have developed modeling approaches to resolve source-specific exposure for application in exposure assessments, epidemiology, risk assessments, and environmental justice. We explore six source-specific air pollution exposure assessment approaches: Photochemical Grid Models (PGMs), Data-Driven Statistical Models, Dispersion Models, Reduced Complexity chemical transport Models (RCMs), Receptor Models, and Proximity Exposure Estimation Models.
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