Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model

Aerosol types in Asian capital cities were classified using a random forest (RF) satellite-based aerosol classification model during 2018–2020 in an investigation of the contributions of aerosol types, with or without Aerosol Robotic Network (AERONET) observations. In this study, we used the recentl...

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Published in:Remote Sensing
Main Authors: Wonei Choi, Hyeongwoo Kang, Dongho Shin, Hanlim Lee
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2021
Subjects:
Online Access:https://doi.org/10.3390/rs13132464
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author Wonei Choi
Hyeongwoo Kang
Dongho Shin
Hanlim Lee
author_facet Wonei Choi
Hyeongwoo Kang
Dongho Shin
Hanlim Lee
author_sort Wonei Choi
collection MDPI Open Access Publishing
container_issue 13
container_start_page 2464
container_title Remote Sensing
container_volume 13
description Aerosol types in Asian capital cities were classified using a random forest (RF) satellite-based aerosol classification model during 2018–2020 in an investigation of the contributions of aerosol types, with or without Aerosol Robotic Network (AERONET) observations. In this study, we used the recently developed RF aerosol classification model to detect and classify aerosols into four types: pure dust, dust-dominated aerosols, strongly absorbing aerosols, and non-absorbing aerosols. Aerosol optical and microphysical properties for each aerosol type detected by the RF model were found to be reasonably consistent with those for typical aerosol types. In Asian capital cities, pollution-sourced aerosols, especially non-absorbing aerosols, were found to predominate, although Asian cities also tend to be seasonally affected by natural dust aerosols, particularly in East Asia (March–May) and South Asia (March–August). No specific seasonal effects on aerosol type were detected in Southeast Asia, where there was a predominance of non-absorbing aerosols. The aerosol types detected by the RF model were compared with those identified by other aerosol classification models. This study indicates that the satellite-based RF model may be used as an alternative in the absence of AERONET sites or observations.
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https://dx.doi.org/10.3390/rs13132464
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spelling ftmdpi:oai:mdpi.com:/2072-4292/13/13/2464/ 2025-01-16T18:38:20+00:00 Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model Wonei Choi Hyeongwoo Kang Dongho Shin Hanlim Lee agris 2021-06-24 application/pdf https://doi.org/10.3390/rs13132464 EN eng Multidisciplinary Digital Publishing Institute Urban Remote Sensing https://dx.doi.org/10.3390/rs13132464 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 13; Issue 13; Pages: 2464 aerosol classification aerosol remote sensing space-borne remote sensing aerosol type machine learning seasonal aerosol variation urban TROPOMI AERONET MODIS Text 2021 ftmdpi https://doi.org/10.3390/rs13132464 2023-08-01T02:01:46Z Aerosol types in Asian capital cities were classified using a random forest (RF) satellite-based aerosol classification model during 2018–2020 in an investigation of the contributions of aerosol types, with or without Aerosol Robotic Network (AERONET) observations. In this study, we used the recently developed RF aerosol classification model to detect and classify aerosols into four types: pure dust, dust-dominated aerosols, strongly absorbing aerosols, and non-absorbing aerosols. Aerosol optical and microphysical properties for each aerosol type detected by the RF model were found to be reasonably consistent with those for typical aerosol types. In Asian capital cities, pollution-sourced aerosols, especially non-absorbing aerosols, were found to predominate, although Asian cities also tend to be seasonally affected by natural dust aerosols, particularly in East Asia (March–May) and South Asia (March–August). No specific seasonal effects on aerosol type were detected in Southeast Asia, where there was a predominance of non-absorbing aerosols. The aerosol types detected by the RF model were compared with those identified by other aerosol classification models. This study indicates that the satellite-based RF model may be used as an alternative in the absence of AERONET sites or observations. Text Aerosol Robotic Network MDPI Open Access Publishing Remote Sensing 13 13 2464
spellingShingle aerosol classification
aerosol remote sensing
space-borne remote sensing
aerosol type
machine learning
seasonal aerosol variation
urban
TROPOMI
AERONET
MODIS
Wonei Choi
Hyeongwoo Kang
Dongho Shin
Hanlim Lee
Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title_full Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title_fullStr Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title_full_unstemmed Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title_short Satellite-Based Aerosol Classification for Capital Cities in Asia Using a Random Forest Model
title_sort satellite-based aerosol classification for capital cities in asia using a random forest model
topic aerosol classification
aerosol remote sensing
space-borne remote sensing
aerosol type
machine learning
seasonal aerosol variation
urban
TROPOMI
AERONET
MODIS
topic_facet aerosol classification
aerosol remote sensing
space-borne remote sensing
aerosol type
machine learning
seasonal aerosol variation
urban
TROPOMI
AERONET
MODIS
url https://doi.org/10.3390/rs13132464