Satellite retrieval of aerosol combined with assimilated forecast
<p>We developed a new aerosol satellite retrieval algorithm combining a numerical aerosol forecast. In the retrieval algorithm, the short-term forecast from an aerosol data assimilation system was used as an a priori estimate instead of spatially and temporally constant values. This method was...
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doaj-62dae671759a4422ab228a7e17da9ac82021-02-10T07:36:11ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242021-02-01211797181310.5194/acp-21-1797-2021Satellite retrieval of aerosol combined with assimilated forecastM. Yoshida0M. Yoshida1K. Yumimoto2T. M. Nagao3T. Y. Tanaka4M. Kikuchi5H. Murakami6Japan Aerospace Exploration Agency, Tsukuba, 305-8505, Japanpresent address: Remote Sensing Technology Center of Japan, Tsukuba, 305-8505, JapanResearch Institute for Applied Mechanics, Kyushu University, Fukuoka, 816-8580, JapanAtmosphere and Ocean Research Institute, The University of Tokyo, Chiba, 277-8568, JapanMeteorological Research Institute, Tsukuba, 305-0052, JapanJapan Aerospace Exploration Agency, Tsukuba, 305-8505, JapanJapan Aerospace Exploration Agency, Tsukuba, 305-8505, Japan<p>We developed a new aerosol satellite retrieval algorithm combining a numerical aerosol forecast. In the retrieval algorithm, the short-term forecast from an aerosol data assimilation system was used as an a priori estimate instead of spatially and temporally constant values. This method was demonstrated using observation of the Advanced Himawari Imager onboard the Japan Meteorological Agency's geostationary satellite Himawari-8. Overall, the retrieval results incorporated strengths of the observation and the model and complemented their respective weaknesses, showing spatially finer distributions than the model forecast and less noisy distributions than the original algorithm. We validated the new algorithm using ground observation data and found that the aerosol parameters detectable by satellite sensors were retrieved more accurately than an a priori model forecast by adding satellite information. Further, the satellite retrieval accuracy was improved by introducing the model forecast instead of the constant a priori estimates. By using the assimilated forecast for an a priori estimate, information from previous observations can be propagated to future retrievals, leading to better retrieval accuracy. Observational information from the satellite and aerosol transport by the model are incorporated cyclically to effectively estimate the optimum field of aerosol.</p>https://acp.copernicus.org/articles/21/1797/2021/acp-21-1797-2021.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
M. Yoshida M. Yoshida K. Yumimoto T. M. Nagao T. Y. Tanaka M. Kikuchi H. Murakami |
spellingShingle |
M. Yoshida M. Yoshida K. Yumimoto T. M. Nagao T. Y. Tanaka M. Kikuchi H. Murakami Satellite retrieval of aerosol combined with assimilated forecast Atmospheric Chemistry and Physics |
author_facet |
M. Yoshida M. Yoshida K. Yumimoto T. M. Nagao T. Y. Tanaka M. Kikuchi H. Murakami |
author_sort |
M. Yoshida |
title |
Satellite retrieval of aerosol combined with assimilated forecast |
title_short |
Satellite retrieval of aerosol combined with assimilated forecast |
title_full |
Satellite retrieval of aerosol combined with assimilated forecast |
title_fullStr |
Satellite retrieval of aerosol combined with assimilated forecast |
title_full_unstemmed |
Satellite retrieval of aerosol combined with assimilated forecast |
title_sort |
satellite retrieval of aerosol combined with assimilated forecast |
publisher |
Copernicus Publications |
series |
Atmospheric Chemistry and Physics |
issn |
1680-7316 1680-7324 |
publishDate |
2021-02-01 |
description |
<p>We developed a new aerosol satellite retrieval algorithm
combining a numerical aerosol forecast. In the retrieval algorithm, the
short-term forecast from an aerosol data assimilation system was used as an a priori estimate instead of spatially and temporally constant values. This
method was demonstrated using observation of the Advanced Himawari Imager
onboard the Japan Meteorological Agency's geostationary satellite
Himawari-8. Overall, the retrieval results incorporated strengths of the
observation and the model and complemented their respective weaknesses,
showing spatially finer distributions than the model forecast and less noisy
distributions than the original algorithm. We validated the new algorithm
using ground observation data and found that the aerosol parameters
detectable by satellite sensors were retrieved more accurately than an a priori
model forecast by adding satellite information. Further, the satellite
retrieval accuracy was improved by introducing the model forecast instead of
the constant a priori estimates. By using the assimilated forecast for an a priori estimate, information from previous observations can be propagated to
future retrievals, leading to better retrieval accuracy. Observational
information from the satellite and aerosol transport by the model are
incorporated cyclically to effectively estimate the optimum field of
aerosol.</p> |
url |
https://acp.copernicus.org/articles/21/1797/2021/acp-21-1797-2021.pdf |
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