JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)

We present a new surface-atmospheric dataset for driving ocean–sea-ice models based on Japanese 55-year atmospheric reanalysis (JRA-55), referred to here as JRA55-do. The JRA55-do dataset aims to replace the CORE interannual forcing version 2 (hereafter called the CORE dataset), which is currently u...

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Published in:Ocean Modelling
Main Authors: Tsujino, Hiroyuki, Urakawa, Shogo, Nakano, Hideyuki, Small, R. Justin, Kim, Who, Yeager, Stephen, Danabasoglu, Gokhan, Suzuki, Tatsuo, Bamber, Jonathan L., Bentsen, Mats, Böning, Claus W., Bozec, Alexandra, Chassignet, Eric, Curchitser, Enrique, Boeira Dias, Fabio, Durack, Paul James, Griffies, Stephen, Harada, Yayoi, Ilicak, Mehmet, Josey, Simon, Kobayashi, Chiaki, Kobayashi, Shinya, Komuro, Yoshiki, Large, William, Le Sommer, Julien, Marsland, Simon, Masina, Simona, Scheinert, Markus, Tomita, Hiroyuki, Valdivieso, Maria, Yamazaki, Dai
Other Authors: #PLACEHOLDER_PARENT_METADATA_VALUE#, Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione Bologna, Bologna, Italia
Format: Article in Journal/Newspaper
Language:English
Published: 2018
Subjects:
Online Access:http://hdl.handle.net/2122/12523
https://doi.org/10.1016/j.ocemod.2018.07.002
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spelling ftingv:oai:www.earth-prints.org:2122/12523 2023-05-15T18:17:49+02:00 JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do) Tsujino, Hiroyuki Urakawa, Shogo Nakano, Hideyuki Small, R. Justin Kim, Who Yeager, Stephen Danabasoglu, Gokhan Suzuki, Tatsuo Bamber, Jonathan L. Bentsen, Mats Böning, Claus W. Bozec, Alexandra Chassignet, Eric Curchitser, Enrique Boeira Dias, Fabio Durack, Paul James Griffies, Stephen Harada, Yayoi Ilicak, Mehmet Josey, Simon Kobayashi, Chiaki Kobayashi, Shinya Komuro, Yoshiki Large, William Le Sommer, Julien Marsland, Simon Masina, Simona Scheinert, Markus Tomita, Hiroyuki Valdivieso, Maria Yamazaki, Dai #PLACEHOLDER_PARENT_METADATA_VALUE# Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione Bologna, Bologna, Italia 2018 http://hdl.handle.net/2122/12523 https://doi.org/10.1016/j.ocemod.2018.07.002 en eng Ocean Modelling /130 (2018) http://hdl.handle.net/2122/12523 doi:10.1016/j.ocemod.2018.07.002 restricted article 2018 ftingv https://doi.org/10.1016/j.ocemod.2018.07.002 2022-07-29T06:07:46Z We present a new surface-atmospheric dataset for driving ocean–sea-ice models based on Japanese 55-year atmospheric reanalysis (JRA-55), referred to here as JRA55-do. The JRA55-do dataset aims to replace the CORE interannual forcing version 2 (hereafter called the CORE dataset), which is currently used in the framework of the Coordinated Ocean-ice Reference Experiments (COREs) and the Ocean Model Intercomparison Project (OMIP). A major improvement in JRA55-do is the refined horizontal grid spacing (∼ 55 km) and temporal interval (3 hr). The data production method for JRA55-do essentially follows that of the CORE dataset, whereby the surface fields from an atmospheric reanalysis are adjusted relative to reference datasets. To improve the adjustment method, we use high-quality products derived from satellites and from several other atmospheric reanalysis projects, as well as feedback on the CORE dataset from the ocean modelling community. Notably, the surface air temperature and specific humidity are adjusted using multi-reanalysis ensemble means. In JRA55-do, the downwelling radiative fluxes and precipitation, which are affected by an ambiguous cloud parameterisation employed in the atmospheric model used for the reanalysis, are based on the reanalysis products. This approach represents a notable change from the CORE dataset, which imported independent observational products. Consequently, the JRA55-do dataset is more self-contained than the CORE dataset, and thus can be continually updated in near real-time. The JRA55-do dataset extends from 1958 to the present, with updates expected at least annually. This paper details the adjustments to the original JRA-55 fields, the scientific rationale for these adjustments, and the evaluation of JRA55-do. The adjustments successfully corrected the biases in the original JRA-55 fields. The globally averaged features are similar between the JRA55-do and CORE datasets, implying that JRA55-do can suitably replace the CORE dataset for use in driving global ocean–sea-ice ... Article in Journal/Newspaper Sea ice Earth-Prints (Istituto Nazionale di Geofisica e Vulcanologia) Ocean Modelling 130 79 139
institution Open Polar
collection Earth-Prints (Istituto Nazionale di Geofisica e Vulcanologia)
op_collection_id ftingv
language English
description We present a new surface-atmospheric dataset for driving ocean–sea-ice models based on Japanese 55-year atmospheric reanalysis (JRA-55), referred to here as JRA55-do. The JRA55-do dataset aims to replace the CORE interannual forcing version 2 (hereafter called the CORE dataset), which is currently used in the framework of the Coordinated Ocean-ice Reference Experiments (COREs) and the Ocean Model Intercomparison Project (OMIP). A major improvement in JRA55-do is the refined horizontal grid spacing (∼ 55 km) and temporal interval (3 hr). The data production method for JRA55-do essentially follows that of the CORE dataset, whereby the surface fields from an atmospheric reanalysis are adjusted relative to reference datasets. To improve the adjustment method, we use high-quality products derived from satellites and from several other atmospheric reanalysis projects, as well as feedback on the CORE dataset from the ocean modelling community. Notably, the surface air temperature and specific humidity are adjusted using multi-reanalysis ensemble means. In JRA55-do, the downwelling radiative fluxes and precipitation, which are affected by an ambiguous cloud parameterisation employed in the atmospheric model used for the reanalysis, are based on the reanalysis products. This approach represents a notable change from the CORE dataset, which imported independent observational products. Consequently, the JRA55-do dataset is more self-contained than the CORE dataset, and thus can be continually updated in near real-time. The JRA55-do dataset extends from 1958 to the present, with updates expected at least annually. This paper details the adjustments to the original JRA-55 fields, the scientific rationale for these adjustments, and the evaluation of JRA55-do. The adjustments successfully corrected the biases in the original JRA-55 fields. The globally averaged features are similar between the JRA55-do and CORE datasets, implying that JRA55-do can suitably replace the CORE dataset for use in driving global ocean–sea-ice ...
author2 #PLACEHOLDER_PARENT_METADATA_VALUE#
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione Bologna, Bologna, Italia
format Article in Journal/Newspaper
author Tsujino, Hiroyuki
Urakawa, Shogo
Nakano, Hideyuki
Small, R. Justin
Kim, Who
Yeager, Stephen
Danabasoglu, Gokhan
Suzuki, Tatsuo
Bamber, Jonathan L.
Bentsen, Mats
Böning, Claus W.
Bozec, Alexandra
Chassignet, Eric
Curchitser, Enrique
Boeira Dias, Fabio
Durack, Paul James
Griffies, Stephen
Harada, Yayoi
Ilicak, Mehmet
Josey, Simon
Kobayashi, Chiaki
Kobayashi, Shinya
Komuro, Yoshiki
Large, William
Le Sommer, Julien
Marsland, Simon
Masina, Simona
Scheinert, Markus
Tomita, Hiroyuki
Valdivieso, Maria
Yamazaki, Dai
spellingShingle Tsujino, Hiroyuki
Urakawa, Shogo
Nakano, Hideyuki
Small, R. Justin
Kim, Who
Yeager, Stephen
Danabasoglu, Gokhan
Suzuki, Tatsuo
Bamber, Jonathan L.
Bentsen, Mats
Böning, Claus W.
Bozec, Alexandra
Chassignet, Eric
Curchitser, Enrique
Boeira Dias, Fabio
Durack, Paul James
Griffies, Stephen
Harada, Yayoi
Ilicak, Mehmet
Josey, Simon
Kobayashi, Chiaki
Kobayashi, Shinya
Komuro, Yoshiki
Large, William
Le Sommer, Julien
Marsland, Simon
Masina, Simona
Scheinert, Markus
Tomita, Hiroyuki
Valdivieso, Maria
Yamazaki, Dai
JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
author_facet Tsujino, Hiroyuki
Urakawa, Shogo
Nakano, Hideyuki
Small, R. Justin
Kim, Who
Yeager, Stephen
Danabasoglu, Gokhan
Suzuki, Tatsuo
Bamber, Jonathan L.
Bentsen, Mats
Böning, Claus W.
Bozec, Alexandra
Chassignet, Eric
Curchitser, Enrique
Boeira Dias, Fabio
Durack, Paul James
Griffies, Stephen
Harada, Yayoi
Ilicak, Mehmet
Josey, Simon
Kobayashi, Chiaki
Kobayashi, Shinya
Komuro, Yoshiki
Large, William
Le Sommer, Julien
Marsland, Simon
Masina, Simona
Scheinert, Markus
Tomita, Hiroyuki
Valdivieso, Maria
Yamazaki, Dai
author_sort Tsujino, Hiroyuki
title JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
title_short JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
title_full JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
title_fullStr JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
title_full_unstemmed JRA-55 based surface dataset for driving ocean–sea-ice models (JRA55-do)
title_sort jra-55 based surface dataset for driving ocean–sea-ice models (jra55-do)
publishDate 2018
url http://hdl.handle.net/2122/12523
https://doi.org/10.1016/j.ocemod.2018.07.002
genre Sea ice
genre_facet Sea ice
op_relation Ocean Modelling
/130 (2018)
http://hdl.handle.net/2122/12523
doi:10.1016/j.ocemod.2018.07.002
op_rights restricted
op_doi https://doi.org/10.1016/j.ocemod.2018.07.002
container_title Ocean Modelling
container_volume 130
container_start_page 79
op_container_end_page 139
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