2024
DOI: 10.1002/qj.4813
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Insights from very‐large‐ensemble data assimilation experiments with a high‐resolution general circulation model of the Red Sea

Sivareddy Sanikommu,
Naila Raboudi,
Mohamad El Gharamti
et al.

Abstract: Ensemble Kalman Filters (EnKFs), which assimilate observations based on statistics derived from an ensemble of samples of ocean states, have become the norm for ocean data assimilation (DA) and forecasting. These schemes are commonly implemented with inflation and localization techniques to increase their ensemble spread and to filter out spurious long‐range correlations resulting from the limited‐size ensembles imposed by computational burden constraints. Such ad‐hoc methods were found to be not necessary in … Show more

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