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A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery

High-spatial-resolution air quality (AQ) mapping is important for identifying pollution sources to facilitate local action. Some of the most populated cities in the world are not equipped with the infrastructure required to monitor AQ levels on the ground and must rely on other sources, like satelli...

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Autores principales: Sorek-Hamer, Meytar, von Pohle, Michael, Sahasrabhojanee, Adwait, Asanjan, Ata Akbari, Deardorff, Emily, Suel, Esra, Lingenfelter, Violet, Das, Kamalika, Oza, Nikunj, Ezzati, Majid, Brauer, Michael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7615102/
https://www.ncbi.nlm.nih.gov/pubmed/37724306
http://dx.doi.org/10.3390/atmos13050696
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author Sorek-Hamer, Meytar
von Pohle, Michael
Sahasrabhojanee, Adwait
Asanjan, Ata Akbari
Deardorff, Emily
Suel, Esra
Lingenfelter, Violet
Das, Kamalika
Oza, Nikunj
Ezzati, Majid
Brauer, Michael
author_facet Sorek-Hamer, Meytar
von Pohle, Michael
Sahasrabhojanee, Adwait
Asanjan, Ata Akbari
Deardorff, Emily
Suel, Esra
Lingenfelter, Violet
Das, Kamalika
Oza, Nikunj
Ezzati, Majid
Brauer, Michael
author_sort Sorek-Hamer, Meytar
collection PubMed
description High-spatial-resolution air quality (AQ) mapping is important for identifying pollution sources to facilitate local action. Some of the most populated cities in the world are not equipped with the infrastructure required to monitor AQ levels on the ground and must rely on other sources, like satellite derived estimates, to monitor AQ. Current satellite-data-based models provide AQ mapping on a kilometer scale at best. In this study we focus on producing hundred-meter-scale AQ maps for urban environments in developed cities. We examined the feasibility of an image-based object-detection analysis approach using very high-spatial-resolution (2.5 m) commercial satellite imagery. We fed the satellite imagery to a deep neural network (DNN) to learn the association between visual urban features and air pollutants. The developed model, which solely uses satellite imagery, was tested and evaluated using both ground monitoring observations and land-use regression modeled PM(2.5) and NO(2) concentrations over London, Vancouver (BC), Los Angeles, and New York City. The results demonstrate a low error with a total RMSE < 2 µg/m(3) and highlight the contribution of specific urban features, such as green areas and roads, to continuous hundred-meter-scale AQ estimation. This approach offers promise for scaling to global applications in developed and developing urban environments. Further analysis on domain transferability will enable application of a parsimonious model based merely on satellite images to create hundred-meter-scale AQ maps in developing cities, where current and historical ground data is limited.
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spelling pubmed-76151022023-09-18 A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery Sorek-Hamer, Meytar von Pohle, Michael Sahasrabhojanee, Adwait Asanjan, Ata Akbari Deardorff, Emily Suel, Esra Lingenfelter, Violet Das, Kamalika Oza, Nikunj Ezzati, Majid Brauer, Michael Atmosphere (Basel) Article High-spatial-resolution air quality (AQ) mapping is important for identifying pollution sources to facilitate local action. Some of the most populated cities in the world are not equipped with the infrastructure required to monitor AQ levels on the ground and must rely on other sources, like satellite derived estimates, to monitor AQ. Current satellite-data-based models provide AQ mapping on a kilometer scale at best. In this study we focus on producing hundred-meter-scale AQ maps for urban environments in developed cities. We examined the feasibility of an image-based object-detection analysis approach using very high-spatial-resolution (2.5 m) commercial satellite imagery. We fed the satellite imagery to a deep neural network (DNN) to learn the association between visual urban features and air pollutants. The developed model, which solely uses satellite imagery, was tested and evaluated using both ground monitoring observations and land-use regression modeled PM(2.5) and NO(2) concentrations over London, Vancouver (BC), Los Angeles, and New York City. The results demonstrate a low error with a total RMSE < 2 µg/m(3) and highlight the contribution of specific urban features, such as green areas and roads, to continuous hundred-meter-scale AQ estimation. This approach offers promise for scaling to global applications in developed and developing urban environments. Further analysis on domain transferability will enable application of a parsimonious model based merely on satellite images to create hundred-meter-scale AQ maps in developing cities, where current and historical ground data is limited. 2022-04-27 /pmc/articles/PMC7615102/ /pubmed/37724306 http://dx.doi.org/10.3390/atmos13050696 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a BY 4.0 (https://creativecommons.org/licenses/by/4.0/) International license.
spellingShingle Article
Sorek-Hamer, Meytar
von Pohle, Michael
Sahasrabhojanee, Adwait
Asanjan, Ata Akbari
Deardorff, Emily
Suel, Esra
Lingenfelter, Violet
Das, Kamalika
Oza, Nikunj
Ezzati, Majid
Brauer, Michael
A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title_full A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title_fullStr A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title_full_unstemmed A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title_short A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery
title_sort deep learning approach for meter-scale air quality estimation in urban environments using very high-spatial-resolution satellite imagery
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7615102/
https://www.ncbi.nlm.nih.gov/pubmed/37724306
http://dx.doi.org/10.3390/atmos13050696
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