A singular evolutive extended Kalman (SEEK) filter is used to assimilate real in situ data in a water column marine ecosystem model. The biogeochemistry of the ecosystem is described by the European Regional Sea Ecosystem Model (ERSEM), while the physical forcing is described by the Princeton Ocean Model (POM). In the SEEK filter, the error statistics are parameterized by means of a suitable basis of empirical orthogonal functions (EOFs). The purpose of this contribution is to track the possibility of using data assimilation techniques for state estimation in marine ecosystem models. In the experiments, real oxygen and nitrate data are used and the results evaluated against independent chlorophyll data. These data were c...
The Ensemble Kalman filter (EnKF) has been applied to a 1-D complex ecosystem model coupled with a h...
An advanced multivariate sequential data assimilation system has been implemented within the framewo...
International audienceThe objective is to explore the potentialities of sequential statistical estim...
International audienceA singular evolutive extended Kalman (SEEK) filter is used to assimilate real ...
Within the European DIADEM project, a data assimilation system for coupled ocean circulation and mar...
The Singular Evolutive Extended Kalman (SEEK) filter has been implemented to assimilate in-situ data...
In this work three versions of the Singular Evolutive Extended Kalman Filter (SEEK) filter are appli...
The Singular Evolutive Extended Kalman (SEEK) filter has been implemented to assimilate in-situ data...
The purpose of this paper is to examine the use of a complex ecosystem model along with near real-...
The objective of this paper was to explore the potentialities of sequential statistical estimation m...
Data assimilation with a Kalman filter is a challenging task in ecosystem modelling. Ecosystem model...
Advanced Kalman filtering techniques were used to assimilate pseudo ocean color and profile data in...
A suite of data-assimilation methods is presented: the Kalman Filter, the Ensemble Kalman Filter (En...
openData Assimilation is nowadays a fundamental part in any forecasting geoscience model. In the fi...
The Ensemble Kalman filter (EnKF) has been applied to a 1-D complex ecosystem model coupled with a h...
The Ensemble Kalman filter (EnKF) has been applied to a 1-D complex ecosystem model coupled with a h...
An advanced multivariate sequential data assimilation system has been implemented within the framewo...
International audienceThe objective is to explore the potentialities of sequential statistical estim...
International audienceA singular evolutive extended Kalman (SEEK) filter is used to assimilate real ...
Within the European DIADEM project, a data assimilation system for coupled ocean circulation and mar...
The Singular Evolutive Extended Kalman (SEEK) filter has been implemented to assimilate in-situ data...
In this work three versions of the Singular Evolutive Extended Kalman Filter (SEEK) filter are appli...
The Singular Evolutive Extended Kalman (SEEK) filter has been implemented to assimilate in-situ data...
The purpose of this paper is to examine the use of a complex ecosystem model along with near real-...
The objective of this paper was to explore the potentialities of sequential statistical estimation m...
Data assimilation with a Kalman filter is a challenging task in ecosystem modelling. Ecosystem model...
Advanced Kalman filtering techniques were used to assimilate pseudo ocean color and profile data in...
A suite of data-assimilation methods is presented: the Kalman Filter, the Ensemble Kalman Filter (En...
openData Assimilation is nowadays a fundamental part in any forecasting geoscience model. In the fi...
The Ensemble Kalman filter (EnKF) has been applied to a 1-D complex ecosystem model coupled with a h...
The Ensemble Kalman filter (EnKF) has been applied to a 1-D complex ecosystem model coupled with a h...
An advanced multivariate sequential data assimilation system has been implemented within the framewo...
International audienceThe objective is to explore the potentialities of sequential statistical estim...