We present the implementation and results of a model tuning and ensemble forecasting experiment using an ensemble Kalman filter for the simultaneous estimation of 12 parameters in a low resolution coupled atmosphere-ocean Earth System Model by tuning it to realistic data sets consisting of Levitus ocean temperature/salinity climatology, and NCEP/NCAR atmospheric temperature/humidity reanalysis data. The resulting ensemble of tuned model states is validated by comparing various diagnostics, such as mass and heat transports, to observational estimates and other model results. We show that this ensemble has a very reasonable climatology, with the 3-D ocean in particular having comparable realism to much more expensive coupled numerical models,...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
We present the implementation and results of a model tuning and ensemble forecasting experiment usin...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
The fate of the North Atlantic thermohaline circulation (THC) is of great significance for regional ...
An Ensemble Kalman Filter is applied to assimilate observed tracer fields in various combinations in...
Decadal predictions by Earth system models aim to capture the state and phase of the climate several...
Decadal predictions by Earth system models aim to capture the state and phase of the climate several...
We examine the bi-stability of the thermohaline circulation and its vulnerability to future CO2 forc...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
Here, we firstly demonstrate the potential of an advanced flow dependent data assimilation method fo...
Can today's global climate model ensembles characterize the 21st century climate in their own 'model...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
We present the implementation and results of a model tuning and ensemble forecasting experiment usin...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
We describe the development of an efficient method for parameter estimation and ensemble forecasting...
The fate of the North Atlantic thermohaline circulation (THC) is of great significance for regional ...
An Ensemble Kalman Filter is applied to assimilate observed tracer fields in various combinations in...
Decadal predictions by Earth system models aim to capture the state and phase of the climate several...
Decadal predictions by Earth system models aim to capture the state and phase of the climate several...
We examine the bi-stability of the thermohaline circulation and its vulnerability to future CO2 forc...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
Here, we firstly demonstrate the potential of an advanced flow dependent data assimilation method fo...
Can today's global climate model ensembles characterize the 21st century climate in their own 'model...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...
International audienceThis paper presents a system to perform large-ensemble climate stochastic fore...