Because of the geographic dependence of model sensitivities and observing systems, allowing optimized parameter values to vary geographically may significantly enhance the signal in parameter estimation. Using an intermediate atmosphere-ocean-land coupled model, the impact of geographic dependence of model sensitivities on parameter optimization is explored within a twin-experiment framework. The coupled model consists of a 1-layer global barotropic atmosphere model, a 1.5-layer baroclinic ocean including a slab mixed layer with simulated upwelling by a streamfunction equation, and a simple land model. The assimilation model is biased by erroneously setting the values of all model parameters. The four most sensitive parameters identified by...
The process of parameter estimation targeting a chosen set of observations is an essential aspect of...
The formulation and simulation characteristics of two new global coupled climate models developed at...
Different practices are currently being used to couple the different components of global models for...
Observational information has a strong geographic dependence that may directly influence the quality...
Imperfect physical parameterization schemes in a coupled climate model are an important source of mo...
Imperfect physical parameterization schemes are an important source of model bias in a coupled model...
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...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
Imperfect dynamical core is an important source of model biases that adversely impact on the model s...
Understanding the unfolding challenges of climate change relies on climate models, many of which hav...
Understanding the unfolding challenges of climate change relies on climate models, many of which hav...
The process of parameter estimation targeting a chosen set of observations is an essential aspect of...
The formulation and simulation characteristics of two new global coupled climate models developed at...
Different practices are currently being used to couple the different components of global models for...
Observational information has a strong geographic dependence that may directly influence the quality...
Imperfect physical parameterization schemes in a coupled climate model are an important source of mo...
Imperfect physical parameterization schemes are an important source of model bias in a coupled model...
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...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
A new optimization strategy is proposed to identify the sensitivities of simulations of atmospheric ...
Imperfect dynamical core is an important source of model biases that adversely impact on the model s...
Understanding the unfolding challenges of climate change relies on climate models, many of which hav...
Understanding the unfolding challenges of climate change relies on climate models, many of which hav...
The process of parameter estimation targeting a chosen set of observations is an essential aspect of...
The formulation and simulation characteristics of two new global coupled climate models developed at...
Different practices are currently being used to couple the different components of global models for...