A new method to produce sea surface temperature using satellite data assimilation into an atmosphere-ocean mixed layer coupled model

Eunjeong Lee, Yign Noh, Naoki Hirose

研究成果: ジャーナルへの寄稿記事

5 引用 (Scopus)

抄録

A new method of producing sea surface temperature (SST) data for numerical weather prediction is suggested, which is obtained from the assimilation of satellite-derived SST into an atmosphere-ocean mixed layer coupledmodel. TheWeatherResearch and Forecasting (WRF)Model and theNohmixed layer model are used for the atmosphere and ocean mixed layer models, respectively. Data assimilation (DA) is carried out in two steps, based on the estimation from the covariancematchingmethod that the daily mean SST of satellite data is more accurate than themodel data, if the number of data in a grid per day is sufficiently large-that is, the daily mean SST bias correction in the firstDAand the sequential SST anomaly correction in the secondDA. For the second DA, the model restarts from the initial condition corrected by the first DA, and DA is applied every 30min using the nudgingmethod.The dailymean and the diurnal variation of satellite SST are assimilated to the bulk and skin SST, respectively. The modeled results with the new data assimilation scheme are validated by statistical comparison with independent satellite and buoy data such as correlation coefficient, root-meansquare difference, and bias. Furthermore, the sensitivity and seasonal variation of the weighting factor in the secondDAare examined. The newapproach illustrates the possibility of applying the atmosphere-oceanmixed layer coupled model for the production of SST data combined with the assimilation of satellite data.

元の言語英語
ページ(範囲)2926-2943
ページ数18
ジャーナルJournal of Atmospheric and Oceanic Technology
30
発行部数12
DOI
出版物ステータス出版済み - 12 1 2013

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data assimilation
mixed layer
satellite data
sea surface temperature
Satellites
atmosphere
ocean
Temperature
method
temperature anomaly
diurnal variation
skin
Skin
seasonal variation
weather
prediction

All Science Journal Classification (ASJC) codes

  • Ocean Engineering
  • Atmospheric Science

これを引用

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T1 - A new method to produce sea surface temperature using satellite data assimilation into an atmosphere-ocean mixed layer coupled model

AU - Lee, Eunjeong

AU - Noh, Yign

AU - Hirose, Naoki

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AB - A new method of producing sea surface temperature (SST) data for numerical weather prediction is suggested, which is obtained from the assimilation of satellite-derived SST into an atmosphere-ocean mixed layer coupledmodel. TheWeatherResearch and Forecasting (WRF)Model and theNohmixed layer model are used for the atmosphere and ocean mixed layer models, respectively. Data assimilation (DA) is carried out in two steps, based on the estimation from the covariancematchingmethod that the daily mean SST of satellite data is more accurate than themodel data, if the number of data in a grid per day is sufficiently large-that is, the daily mean SST bias correction in the firstDAand the sequential SST anomaly correction in the secondDA. For the second DA, the model restarts from the initial condition corrected by the first DA, and DA is applied every 30min using the nudgingmethod.The dailymean and the diurnal variation of satellite SST are assimilated to the bulk and skin SST, respectively. The modeled results with the new data assimilation scheme are validated by statistical comparison with independent satellite and buoy data such as correlation coefficient, root-meansquare difference, and bias. Furthermore, the sensitivity and seasonal variation of the weighting factor in the secondDAare examined. The newapproach illustrates the possibility of applying the atmosphere-oceanmixed layer coupled model for the production of SST data combined with the assimilation of satellite data.

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