Atmospheric chemical forecasts heavily rely on various model parameters, which are often insufficiently known, such as emission rates and deposition velocities. However, a reliable estimation of resulting uncertainties with an ensemble of forecasts is impaired by the high dimensionality of the system. This study presents a novel approach, which substitutes the problem into a low-dimensional subspace spanned by the leading uncertainties. It is based on the idea that the forecast model acts as a dynamical system inducing multivariate correlations of model uncertainties. This enables an efficient perturbation of high-dimensional model parameters according to their leading coupled uncertainties. The specific algorithm presented in this study is...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
We present a hierarchical Bayesian method for atmospheric trace gas inversions. This method is used ...
Uncertainty quantification (UQ) is a fundamental challenge in the numerical simulation of Earth's we...
Atmospheric chemical forecasts heavily rely on various model parameters, which are often insufficien...
The files provided here include the input and output of the KL ensemble generation algorithm for a s...
International audienceThis paper describes a method to automatically generate a large ensemble of ai...
Atmospheric chemistry transport models (ACTMs) are extensively used to provide scientific support fo...
Forecasts of biogenic trace gases in the planetary boundary layer (PBL) are highly affected by simul...
The current state of quantifying uncertainty in chemical transport models (CTM) is often limited and...
International audienceThis paper estimates the uncertainty in the outputs of a chemistry-transport m...
We present a simple method to generate a perturbed parameter ensemble (PPE) of a fully-coupled atmos...
<p>Atmospheric chemistry transport models (ACTMs) are widely used to underpin policy decisions assoc...
[1] This paper addresses the problem of calibrating an ensemble for uncertainty estimation. The cali...
In predictive geophysical model systems, uncertain initial values and model parameters jointly influ...
Representing model uncertainty is important for both numerical weather and climate prediction. Stoch...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
We present a hierarchical Bayesian method for atmospheric trace gas inversions. This method is used ...
Uncertainty quantification (UQ) is a fundamental challenge in the numerical simulation of Earth's we...
Atmospheric chemical forecasts heavily rely on various model parameters, which are often insufficien...
The files provided here include the input and output of the KL ensemble generation algorithm for a s...
International audienceThis paper describes a method to automatically generate a large ensemble of ai...
Atmospheric chemistry transport models (ACTMs) are extensively used to provide scientific support fo...
Forecasts of biogenic trace gases in the planetary boundary layer (PBL) are highly affected by simul...
The current state of quantifying uncertainty in chemical transport models (CTM) is often limited and...
International audienceThis paper estimates the uncertainty in the outputs of a chemistry-transport m...
We present a simple method to generate a perturbed parameter ensemble (PPE) of a fully-coupled atmos...
<p>Atmospheric chemistry transport models (ACTMs) are widely used to underpin policy decisions assoc...
[1] This paper addresses the problem of calibrating an ensemble for uncertainty estimation. The cali...
In predictive geophysical model systems, uncertain initial values and model parameters jointly influ...
Representing model uncertainty is important for both numerical weather and climate prediction. Stoch...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
We present a hierarchical Bayesian method for atmospheric trace gas inversions. This method is used ...
Uncertainty quantification (UQ) is a fundamental challenge in the numerical simulation of Earth's we...