Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula
Given the complex spatiotemporal variability of aerosols, high-frequency satellite observations are essential for accurately mapping their distribution. However, optical remote sensing encounters difficulties in detecting Aerosol Optical Depth (AOD) over cloud-covered regions, creating data gaps tha...
Published in: | Remote Sensing |
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Main Authors: | , , , |
Format: | Text |
Language: | English |
Published: |
Multidisciplinary Digital Publishing Institute
2024
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Subjects: | |
Online Access: | https://doi.org/10.3390/rs16234400 |
_version_ | 1821556211483410432 |
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author | Youjeong Youn Seoyeon Kim Seung Hee Kim Yangwon Lee |
author_facet | Youjeong Youn Seoyeon Kim Seung Hee Kim Yangwon Lee |
author_sort | Youjeong Youn |
collection | MDPI Open Access Publishing |
container_issue | 23 |
container_start_page | 4400 |
container_title | Remote Sensing |
container_volume | 16 |
description | Given the complex spatiotemporal variability of aerosols, high-frequency satellite observations are essential for accurately mapping their distribution. However, optical remote sensing encounters difficulties in detecting Aerosol Optical Depth (AOD) over cloud-covered regions, creating data gaps that limit comprehensive environmental analysis. This study introduces a spatial gap-filling method for Himawari-8/Advanced Himawari Imager (AHI) hourly AOD data, using a Random Forest (RF) model that integrates meteorological variables and model-based AOD data. Developed and validated over South Korea from 1 January to 31 December 2019, the model effectively improved data coverage from 6% to 100%. The approach demonstrated high performance in blind tests, achieving a root mean square error (RMSE) of 0.064 and a correlation coefficient (CC) of 0.966. Meteorological analysis indicated optimal model performance under cold, dry conditions (RMSE: 0.047, CC: 0.956), compared to humid conditions (RMSE: 0.105, CC: 0.921). Validation against Aerosol Robotic Network (AERONET) ground observations showed that, while the original Himawari-8 data exhibited higher accuracy (RMSE: 0.189, CC: 0.815, n = 346), the gap-filled dataset maintained reasonable precision (RMSE: 0.208, CC: 0.711) and significantly increased the number of valid data points (n = 4149). Furthermore, the gap-filled dataset successfully captured seasonal AOD patterns, with values ranging from 0.245–0.300 in winter to 0.381–0.391 in summer, providing a comprehensive view of aerosol dynamics across South Korea. |
format | Text |
genre | Aerosol Robotic Network |
genre_facet | Aerosol Robotic Network |
id | ftmdpi:oai:mdpi.com:/2072-4292/16/23/4400/ |
institution | Open Polar |
language | English |
op_collection_id | ftmdpi |
op_coverage | agris |
op_doi | https://doi.org/10.3390/rs16234400 |
op_relation | Atmospheric Remote Sensing https://dx.doi.org/10.3390/rs16234400 |
op_rights | https://creativecommons.org/licenses/by/4.0/ |
op_source | Remote Sensing Volume 16 Issue 23 Pages: 4400 |
publishDate | 2024 |
publisher | Multidisciplinary Digital Publishing Institute |
record_format | openpolar |
spelling | ftmdpi:oai:mdpi.com:/2072-4292/16/23/4400/ 2025-01-16T18:38:28+00:00 Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula Youjeong Youn Seoyeon Kim Seung Hee Kim Yangwon Lee agris 2024-11-25 application/pdf https://doi.org/10.3390/rs16234400 eng eng Multidisciplinary Digital Publishing Institute Atmospheric Remote Sensing https://dx.doi.org/10.3390/rs16234400 https://creativecommons.org/licenses/by/4.0/ Remote Sensing Volume 16 Issue 23 Pages: 4400 aerosol optical depth (AOD) Himawari-8 gap-filling machine learning Text 2024 ftmdpi https://doi.org/10.3390/rs16234400 2024-11-29T01:04:39Z Given the complex spatiotemporal variability of aerosols, high-frequency satellite observations are essential for accurately mapping their distribution. However, optical remote sensing encounters difficulties in detecting Aerosol Optical Depth (AOD) over cloud-covered regions, creating data gaps that limit comprehensive environmental analysis. This study introduces a spatial gap-filling method for Himawari-8/Advanced Himawari Imager (AHI) hourly AOD data, using a Random Forest (RF) model that integrates meteorological variables and model-based AOD data. Developed and validated over South Korea from 1 January to 31 December 2019, the model effectively improved data coverage from 6% to 100%. The approach demonstrated high performance in blind tests, achieving a root mean square error (RMSE) of 0.064 and a correlation coefficient (CC) of 0.966. Meteorological analysis indicated optimal model performance under cold, dry conditions (RMSE: 0.047, CC: 0.956), compared to humid conditions (RMSE: 0.105, CC: 0.921). Validation against Aerosol Robotic Network (AERONET) ground observations showed that, while the original Himawari-8 data exhibited higher accuracy (RMSE: 0.189, CC: 0.815, n = 346), the gap-filled dataset maintained reasonable precision (RMSE: 0.208, CC: 0.711) and significantly increased the number of valid data points (n = 4149). Furthermore, the gap-filled dataset successfully captured seasonal AOD patterns, with values ranging from 0.245–0.300 in winter to 0.381–0.391 in summer, providing a comprehensive view of aerosol dynamics across South Korea. Text Aerosol Robotic Network MDPI Open Access Publishing Remote Sensing 16 23 4400 |
spellingShingle | aerosol optical depth (AOD) Himawari-8 gap-filling machine learning Youjeong Youn Seoyeon Kim Seung Hee Kim Yangwon Lee Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title | Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title_full | Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title_fullStr | Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title_full_unstemmed | Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title_short | Spatial Gap-Filling of Himawari-8 Hourly AOD Products Using Machine Learning with Model-Based AOD and Meteorological Data: A Focus on the Korean Peninsula |
title_sort | spatial gap-filling of himawari-8 hourly aod products using machine learning with model-based aod and meteorological data: a focus on the korean peninsula |
topic | aerosol optical depth (AOD) Himawari-8 gap-filling machine learning |
topic_facet | aerosol optical depth (AOD) Himawari-8 gap-filling machine learning |
url | https://doi.org/10.3390/rs16234400 |