Abstract Data assimilation has been developed into an effective technology that can utilize a large number of multi-source unconventional data. It cannot only provide the initial field for the ocean numerical prediction model, but also construct the ocean reanalysis datasets and provide the design basis for the ocean observation plan. In data assimilation, the estimation of the observation error is of paramount importance, because the quality of the analysis depends on it. In general, the observation error covariance matrix is diagonal or assumed to be diagonal, which means that the observation errors are independent from one another. However, there are indeed correlations in the observation errors. A diagnostic method has been developed, w...
A new sequential data assimilation method is discussed. It is based on forecasting the error statist...
International audienceThe Kalman filter is a data assimilation algorithm that optimally estimates a ...
This paper compares contending advanced data assimilation algorithms using the same dynamical model ...
Data assimilation has been developed into an effective technology that can utilize a large number of...
Data assimilation is the process of using past and present data to estimate the current synoptic sta...
Data assimilation is a methodology which can optimise the extraction of reliable information from ob...
The traditional analysis scheme in the Ensemble Kalman Filter (EnKF) uses a stochastic perturba-tion...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
The management of ocean and coastal systems needs short term predictions of their physical and ecolo...
The most widely used methods of data assimilation in large-scale oceanography, such as the Simple Oc...
With the increased density of available observation data, data assimilation has become an increasing...
Data assimilation is a methodology, which can optimise the extraction of reliable information from o...
The traditional analysis scheme in the Ensemble Kalman Filter (EnKF) uses a stochastic perturbation ...
A demonstration study of three advanced, sequential data assimilation methods, applied with the nonl...
Data assimilation techniques combine observations and prior model forecasts to create initial condit...
A new sequential data assimilation method is discussed. It is based on forecasting the error statist...
International audienceThe Kalman filter is a data assimilation algorithm that optimally estimates a ...
This paper compares contending advanced data assimilation algorithms using the same dynamical model ...
Data assimilation has been developed into an effective technology that can utilize a large number of...
Data assimilation is the process of using past and present data to estimate the current synoptic sta...
Data assimilation is a methodology which can optimise the extraction of reliable information from ob...
The traditional analysis scheme in the Ensemble Kalman Filter (EnKF) uses a stochastic perturba-tion...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
The management of ocean and coastal systems needs short term predictions of their physical and ecolo...
The most widely used methods of data assimilation in large-scale oceanography, such as the Simple Oc...
With the increased density of available observation data, data assimilation has become an increasing...
Data assimilation is a methodology, which can optimise the extraction of reliable information from o...
The traditional analysis scheme in the Ensemble Kalman Filter (EnKF) uses a stochastic perturbation ...
A demonstration study of three advanced, sequential data assimilation methods, applied with the nonl...
Data assimilation techniques combine observations and prior model forecasts to create initial condit...
A new sequential data assimilation method is discussed. It is based on forecasting the error statist...
International audienceThe Kalman filter is a data assimilation algorithm that optimally estimates a ...
This paper compares contending advanced data assimilation algorithms using the same dynamical model ...