Muestra métricas de impacto externas asociadas a la publicación. Para mayor detalle:
| Indexado |
|
||||
| DOI | 10.1021/ACS.EST.2C07253 | ||||
| Año | 2023 | ||||
| Tipo | artículo de investigación |
Citas Totales
Autores Afiliación Chile
Instituciones Chile
% Participación
Internacional
Autores
Afiliación Extranjera
Instituciones
Extranjeras
High-resolution simulations are essential to resolve fine-scale air pollution patterns due to localized emissions, nonlinear chemical feedbacks, and complex meteorology. However, high-resolution global simulations of air quality remain rare, especially of the Global South. Here, we exploit recent develop-ments to the GEOS-Chem model in its high-performance implementation to conduct 1-year simulations in 2015 at cubed-sphere C360 (similar to 25 km) and C48 (similar to 200 km) resolutions. We investigate the resolution dependence of population exposure and sectoral contributions to surface fine particulate matter (PM2.5) and nitrogen dioxide (NO2), focusing on understudied regions. Our results indicate pronounced spatial heterogeneity at high resolution (C360) with large global population-weighted normalized root-mean-square difference (PW-NRMSD) across resolutions for primary (62-126%) and secondary (26-35%) PM2.5 species. Developing regions are more sensitive to spatial resolution resulting from sparse pollution hotspots, with PW-NRMSD for PM2.5 in the Global South (33%), 1.3 times higher than globally. The PW-NRMSD for PM2.5 for discrete southern cities (49%) is substantially higher than for more clustered northern cities (28%). We find that the relative order of sectoral contributions to population exposure depends on simulation resolution, with implications for location-specific air pollution control strategies.
| Ord. | Autor | Género | Institución - País |
|---|---|---|---|
| 1 | Zhang, Dandan | - |
WASHINGTON UNIV - Estados Unidos
Washington University in St. Louis - Estados Unidos McKelvey School of Engineering - Estados Unidos |
| 2 | Martin, Randall | Hombre |
WASHINGTON UNIV - Estados Unidos
Washington University in St. Louis - Estados Unidos McKelvey School of Engineering - Estados Unidos |
| 3 | Bindle, Liam | - |
WASHINGTON UNIV - Estados Unidos
Washington University in St. Louis - Estados Unidos McKelvey School of Engineering - Estados Unidos |
| 4 | Li, Chi | - |
WASHINGTON UNIV - Estados Unidos
Washington University in St. Louis - Estados Unidos McKelvey School of Engineering - Estados Unidos |
| 5 | Eastham, Sebastian D. | - |
MIT - Estados Unidos
Massachusetts Institute of Technology - Estados Unidos MIT School of Engineering - Estados Unidos |
| 6 | van Donkelaar, Aaron | Hombre |
WASHINGTON UNIV - Estados Unidos
Washington University in St. Louis - Estados Unidos McKelvey School of Engineering - Estados Unidos |
| 7 | GALLARDO-KLENNER, LAURA ELEONOR | Mujer |
Centro de Ciencia del Clima y la Resiliencia - Chile
Universidad de Chile - Chile Centro de Ciencia del Clima y la Resiliencia (CR)2 - Chile |
| Fuente |
|---|
| National Science Foundation |
| National Aeronautics and Space Administration |
| Ames Research Center |
| Center for Climate and Resilience Research |
| Washington University in St. Louis |
| NASA Advanced Information Systems Technology (AIST) Program |
| Center for Climate and Resilience Research (CR2, FONDAP) |
| Agradecimiento |
|---|
| This work was supported by the NASA Advanced Information Systems Technology (AIST) Program (80NSSC20K0281) and by the National Science Foundation (2020673 and 2244984). Laura Gallardo thanks the support by the Center for Climate and Resilience Research (CR2, FONDAP 15110009). The GEOS-FP data used in this study have been provided by the Global Modeling and Assimilation Office (GMAO) at the NASA Goddard Space Flight Center. We are also grateful for computing resources and technical help from RIS Scientific Compute Platforms at Washington University in St. Louis and the NASA High-End Computing (HEC) Program through the NASA Advanced Supercomputing (NAS) Division at Ames Research Center. |
| This work was supported by the NASA Advanced Information Systems Technology (AIST) Program (80NSSC20K0281) and by the National Science Foundation (2020673 and 2244984). Laura Gallardo thanks the support by the Center for Climate and Resilience Research (CR2, FONDAP 15110009). The GEOS-FP data used in this study have been provided by the Global Modeling and Assimilation Office (GMAO) at the NASA Goddard Space Flight Center. We are also grateful for computing resources and technical help from RIS Scientific Compute Platforms at Washington University in St. Louis and the NASA High-End Computing (HEC) Program through the NASA Advanced Supercomputing (NAS) Division at Ames Research Center. |