Data assimilation using Ensemble Transform Kalman Filter (ETKF) in ROMS model for Indian Ocean

被引:0
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作者
Md. Nurujjaman
A. Apte
P. Vinayachandran
机构
[1] National Institute of Sikkim,Department of Physics
[2] TIFR,Centre for Applicable Mathematics
[3] Indian Institute Sciences,Centre for Atmospheric and Ocean Sciences
关键词
Indian Ocean; Data Assimilation; European Physical Journal Special Topic; Mixed Layer Depth; Ocean General Circulation Model;
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学科分类号
摘要
Study of Oceans dynamics and forecast is crucial as it influences the regional climate and other marine activities. Forecasting oceanographic states like sea surface currents, Sea surface temperature (SST) and mixed layer depth at different time scales is extremely important for these activities. These forecasts are generated by various ocean general circulation models (OGCM). One such model is the Regional Ocean Modelling System (ROMS). Though ROMS can simulate several features of ocean, it cannot reproduce the thermocline of the ocean properly. Solution to this problem is to incorporates data assimilation (DA) in the model. DA system using Ensemble Transform Kalman Filter (ETKF) has been developed for ROMS model to improve the accuracy of the model forecast. To assimilate data temperature and salinity from ARGO data has been used as observation. Assimilated temperature and salinity without localization shows oscillations compared to the model run without assimilation for India Ocean. Same was also found for u and v-velocity fields. With localization we found that the state variables are diverging within the localization scale.
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页码:875 / 883
页数:8
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