A super-ensemble methodology is proposed to improve the quality of short-term ocean analyses for sea surface temperature (SST) in the Mediterranean Sea. The methodology consists of a multiple linear regression technique applied to a multi-physics multi-model super-ensemble (MMSE) data set. This is a collection of different operational forecasting analyses together with ad hoc simulations, created by modifying selected numerical model parameterizations. A new linear regression algorithm based on empirical orthogonal function filtering techniques is shown to be efficient in preventing overfitting problems, although the best performance is achieved when a simple spatial filter is applied after the linear regression. Our results show that the M...
During the last three decades, ensemble modelling has switched the focus from deterministic to proba...
International audienceWe investigate the predictability properties of the ocean dynamics using an en...
ensemble ocean forecast methodology based on a surface wind BHM (MFS-Wind-BHM) in data assimilation ...
A super-ensemble methodology is proposed to improve the quality of short-term ocean analyses for sea...
none33The use of Multi-model Super-Ensembles (SE) which optimally combine different models, has been...
The prediction of surface drift of floating objects is an important task, with applications such as ...
Nowadays, several operational ocean wave forecasts are available for a same region. These prediction...
Super Ensemble (SE) techniques have recently allowed improving the forecast of various important oce...
This study compares the ability of two approaches integrating models and data to forecast the Liguri...
A Bayesian hierarchical model (BHM) is developed to estimate surface vector wind (SVW) fields and a...
none8A Bayesian hierarchical model (BHM) is developed to estimate surface vector wind (SVW) fields a...
This article analyzes the ocean forecast response to surface vector wind (SVW) distributi...
We investigate the predictability properties of the ocean dynamics using an ensemble of short-term n...
A continuing trend in numerical weather prediction (NWP) is the desire for reduced model forecast er...
During the last three decades, ensemble modelling has switched the focus from deterministic to proba...
International audienceWe investigate the predictability properties of the ocean dynamics using an en...
ensemble ocean forecast methodology based on a surface wind BHM (MFS-Wind-BHM) in data assimilation ...
A super-ensemble methodology is proposed to improve the quality of short-term ocean analyses for sea...
none33The use of Multi-model Super-Ensembles (SE) which optimally combine different models, has been...
The prediction of surface drift of floating objects is an important task, with applications such as ...
Nowadays, several operational ocean wave forecasts are available for a same region. These prediction...
Super Ensemble (SE) techniques have recently allowed improving the forecast of various important oce...
This study compares the ability of two approaches integrating models and data to forecast the Liguri...
A Bayesian hierarchical model (BHM) is developed to estimate surface vector wind (SVW) fields and a...
none8A Bayesian hierarchical model (BHM) is developed to estimate surface vector wind (SVW) fields a...
This article analyzes the ocean forecast response to surface vector wind (SVW) distributi...
We investigate the predictability properties of the ocean dynamics using an ensemble of short-term n...
A continuing trend in numerical weather prediction (NWP) is the desire for reduced model forecast er...
During the last three decades, ensemble modelling has switched the focus from deterministic to proba...
International audienceWe investigate the predictability properties of the ocean dynamics using an en...
ensemble ocean forecast methodology based on a surface wind BHM (MFS-Wind-BHM) in data assimilation ...