Assimilation of temperature observations into an ocean model near the equator often results in a dynamically unbalanced state with unrealistic overturning circulations. The way in which these circulations arise from systematic errors in the model or its forcing is discussed. A scheme is proposed, based on the theory of state augmentation, which uses the departures of the model state from the observations to update slowly evolving bias fields. Results are summarized from an experiment applying this bias correction scheme to an ocean general circulation model. They show that the method produces more balanced analyses and a better fit to the temperature observations
With this work, we aim at developping a new method of bias correction using data assimilation. This ...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...
The mode bias is present and time-dependent due to imperfect configurations. Data assimilation is th...
In this study, we aim at developing a new method of bias correction using data assimilation. This me...
International audienceThis paper discusses the problems arising from the presence of system bias in ...
International audienceWe propose a methodology for the treatment of the systematic model error in va...
The question is addressed whether using unbalanced updates in ocean-data assimilation schemes for se...
Ocean prediction systems are now able to analyse and predict temperature, salinity and velocity stru...
Data assimilation has been used for decades in fields like engineering or signal processing to impro...
A simple data assimilation technique has been applied for initializing coupled ocean-atmosphere gene...
International audienceTo compensate for a poorly known geoid, satellite altimeter data is usually an...
Thirty-six hundred temperature profiles collected during 1984 were assimilated into a multilayer pri...
The assimilation of high-quality in situ data into ocean models is known to lead to imbalanced analy...
We consider a method for assimilating the observation data based on the theory of Kalman filtration ...
With this work, we aim at developping a new method of bias correction using data assimilation. This ...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...
The mode bias is present and time-dependent due to imperfect configurations. Data assimilation is th...
In this study, we aim at developing a new method of bias correction using data assimilation. This me...
International audienceThis paper discusses the problems arising from the presence of system bias in ...
International audienceWe propose a methodology for the treatment of the systematic model error in va...
The question is addressed whether using unbalanced updates in ocean-data assimilation schemes for se...
Ocean prediction systems are now able to analyse and predict temperature, salinity and velocity stru...
Data assimilation has been used for decades in fields like engineering or signal processing to impro...
A simple data assimilation technique has been applied for initializing coupled ocean-atmosphere gene...
International audienceTo compensate for a poorly known geoid, satellite altimeter data is usually an...
Thirty-six hundred temperature profiles collected during 1984 were assimilated into a multilayer pri...
The assimilation of high-quality in situ data into ocean models is known to lead to imbalanced analy...
We consider a method for assimilating the observation data based on the theory of Kalman filtration ...
With this work, we aim at developping a new method of bias correction using data assimilation. This ...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...
Uncertainties in physical parameters of coupled models are an important source of model bias and adv...