2019
DOI: 10.1002/qj.3649
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Impact of dynamical representational errors on an Indian Ocean ensemble data assimilation system

Abstract: This study investigates the impact of dynamical representational error (RE) on the analysis of an ocean ensemble Kalman filter‐based data assimilation system, LETKF‐ROMS (Local Ensemble Transform Kalman Filter – Regional Ocean Modelling System) configured for the Indian Ocean and assimilating in situ temperature and salinity observations from Argo. Three different approaches to account for the RE are studied and inter‐compared: (a) static RE (varies in horizontal and vertical direction), (b) dynamic RE (varies… Show more

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Cited by 11 publications
(15 citation statements)
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“…The improved ensemble and balanced ocean forecasting system using ensemble atmospheric forcing and perturbed model physics presented in this study is an important step toward the development of the first ocean forecasting and reanalysis system for the Red Sea. Further enhancement of the performances of the present system by using flow‐and‐depth‐dependent observation error variances (e.g., Sanikommu et al, 2019) will be the focus of our next effort.…”
Section: Discussionmentioning
confidence: 99%
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“…The improved ensemble and balanced ocean forecasting system using ensemble atmospheric forcing and perturbed model physics presented in this study is an important step toward the development of the first ocean forecasting and reanalysis system for the Red Sea. Further enhancement of the performances of the present system by using flow‐and‐depth‐dependent observation error variances (e.g., Sanikommu et al, 2019) will be the focus of our next effort.…”
Section: Discussionmentioning
confidence: 99%
“…Observation error variance is an important element of any data assimilation system (e.g., Hoteit et al, 2010; Sanikommu et al, 2019) and should account for errors due to: deficiencies in measurement devices, unresolved processes, unresolved subgridscale dynamics, and numerical errors in interpolation. Temporally static and spatially homogeneous observational error variance values of (0.04 m) 2 , (0.5°C) 2 , and (0.3 psu) 2 are used for the satellite along‐track SLA, the in situ T and S, respectively.…”
Section: Description Of the Assimilation System And Experimentsmentioning
confidence: 99%
“…Gittings et al, 2018;Zhan et al, 2018 Observation error variances, which comprises errors due to instruments and unresolved scales and processes and interpolation, is an important element of the data assimilation system (e.g. Hoteit et al, 2010;Sivareddy et al, 2019). Temporally static and spatially homogeneous observational error variance values of (0.04 m) 2 , (0.5°C) 2 and (0.3psu) 2 are used for the satellite along-track SLA, the in situ T and S, respectively.…”
Section: Assimilated Observationsmentioning
confidence: 99%
“…Temporally static and spatially homogeneous observational error variance values of (0.04 m) 2 , (0.5°C) 2 and (0.3psu) 2 are used for the satellite along-track SLA, the in situ T and S, respectively. These error variances for T and S, which are chosen in accordance with the suggested ranges of in situ observational errors by earlier assimilation studies (e.g., Richman et al, 2005;Forget and Wunsch, 2007;Oke and Sakov, 2008;Karspeck, 2016), are intended to account the expected dominant errors from unresolved scales and processes (Sivareddy et al 2019). The SLA observational error of (0.04 m) 2 , which is slightly larger than the suggested altimeter accuracy (AVISO 2015;Hoteit et al, 2002), is based on the sensitivity of our assimilation system to various choices of error variances, (0.04 m) 2 , (0.07 m) 2 , and (0.1 m) 2 (results not shown).…”
Section: Assimilated Observationsmentioning
confidence: 99%
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