Mainstream numerical weather prediction (NWP) centers usually estimate the standard deviations of background error by using a randomization technique to calibrate specific parameters of the background error covariance model in variational data assimilation (VAR) systems. However, the sampling size of the randomization technique is typically several orders of magnitude smaller than that of model state variables, and using finite-sized estimates as a proxy for the truth can lead to sampling noise, which may contaminate the estimation of the standard deviation. The sampling noise is firstly investigated in an atmospheric model to show that the sampling noise has a symmetrical structure oscillating around the truth on a small scale. To alleviat...
Ensemble methods are widely used in data assimilation for numerical weather prediction. These method...
Data assimilation has been widely applied in atmospheric and oceanic forecasting systems and particl...
Localization is performed in ensemble data assimilation schemes to eliminate correlations that are c...
The four-dimensional variational data assimilation (4D-Var) method has been widely employed as an op...
International audienceBackground-error covariances can be estimated from an ensemble of forecast dif...
WARNING : This is a preprint of an article accepted for publication in QUARTERLY JOURNAL OF THE ROYA...
Strategies to improve covariance estimates for ensemble-based assimilation of near-surface observati...
A methodology for specifying ensemble-based background error covariances within the recursive-filter...
To account for model error on multiple scales in convective-scale data assimilation, we incorporate ...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
International audienceKilometre-scale numerical weather prediction addresses the challenge of foreca...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
Recent research has shown that the use of correlated observation errors in data assimilation can lea...
Data assimilation is a statistical technique that combines information from observations and a math...
2 The spread of an ensemble of weather predictions initialized from an ensemble Kalman filter may gr...
Ensemble methods are widely used in data assimilation for numerical weather prediction. These method...
Data assimilation has been widely applied in atmospheric and oceanic forecasting systems and particl...
Localization is performed in ensemble data assimilation schemes to eliminate correlations that are c...
The four-dimensional variational data assimilation (4D-Var) method has been widely employed as an op...
International audienceBackground-error covariances can be estimated from an ensemble of forecast dif...
WARNING : This is a preprint of an article accepted for publication in QUARTERLY JOURNAL OF THE ROYA...
Strategies to improve covariance estimates for ensemble-based assimilation of near-surface observati...
A methodology for specifying ensemble-based background error covariances within the recursive-filter...
To account for model error on multiple scales in convective-scale data assimilation, we incorporate ...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
International audienceKilometre-scale numerical weather prediction addresses the challenge of foreca...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
Recent research has shown that the use of correlated observation errors in data assimilation can lea...
Data assimilation is a statistical technique that combines information from observations and a math...
2 The spread of an ensemble of weather predictions initialized from an ensemble Kalman filter may gr...
Ensemble methods are widely used in data assimilation for numerical weather prediction. These method...
Data assimilation has been widely applied in atmospheric and oceanic forecasting systems and particl...
Localization is performed in ensemble data assimilation schemes to eliminate correlations that are c...