Research progress, challenges, and prospects of PM<sub>2.5</sub> concentration estimation using satellite data
Type de ressource
Auteurs/contributeurs
- Zhu, Shoutao (Auteur)
- Tang, Jiayi (Auteur)
- Zhou, Xiaolu (Auteur)
- Li, Peng (Auteur)
- Liu, Zelin (Auteur)
- Zhang, Cicheng (Auteur)
- Zou, Ziying (Auteur)
- Li, Tong (Auteur)
- Peng, Changhui (Auteur)
Titre
Research progress, challenges, and prospects of PM<sub>2.5</sub> concentration estimation using satellite data
Résumé
Satellite data are vital for understanding the large-scale spatial distribution of particulate matter (PM
2.5
) due to their low cost, wide coverage, and all-weather capability. Estimation of PM
2.5
using satellite aerosol optical depth (AOD) products is a popular method. In this paper, we review the PM
2.5
estimation process based on satellite AOD data in terms of data sources (i.e., inversion algorithms, data sets, and interpolation methods), estimation models (i.e., statistical regression, chemical transport models, machine learning, and combinatorial analysis), and modeling validation (i.e., four types of cross-validation (CV) methods). We found that the accuracy of time-based CV is lower than others. We found significant differences in modeling accuracy between different seasons ( p < 0.01) and different spatial resolutions ( p < 0.01). We explain these phenomena in this article. Finally, we summarize the research process, present challenges, and future directions in this field. We opine that low-cost mobile devices combined with transfer learning or hybrid modeling offer research opportunities in areas with limited PM
2.5
monitoring stations and historical PM
2.5
estimation. These methods can be a good choice for air pollution estimation in developing countries. The purpose of this study is to provide a basic framework for future researchers to conduct relevant research, enabling them to understand current research progress and future research directions.
Publication
Environmental Reviews
Volume
31
Numéro
4
Pages
605-631
Date
2023-12-01
Abrév. de revue
Environ. Rev.
Langue
en
ISSN
1181-8700, 1208-6053
Consulté le
11/11/2024 21:49
Catalogue de bibl.
DOI.org (Crossref)
Référence
Zhu, S., Tang, J., Zhou, X., Li, P., Liu, Z., Zhang, C., Zou, Z., Li, T., & Peng, C. (2023). Research progress, challenges, and prospects of PM2.5 concentration estimation using satellite data. Environmental Reviews, 31(4), 605–631. https://doi.org/10.1139/er-2022-0125
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