The task of providing an optimal analysis of the state of the atmosphere requires the development of dynamic data-driven systems (D³AS) that efficiently integrate the observational data and the models. In this paper we discuss fundamental aspects of nonlinear ensemble data assimilation applied to atmospheric chemical transport models. We formulate autoregressive models for the background errors and show how these models are capable of capturing flow dependent correlations. Total energy singular vectors describe the directions of maximum errors growth and are used to initialize the ensembles. We highlight the challenges encountered in the computation of singular vectors in the presence of stiff chemistry and propose solutions to overcome the...
International audienceData assimilation is used in atmospheric chemistry models to improve air quali...
Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construc...
In predictive geophysical model systems, uncertain initial values and model parameters jointly influ...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
Abstract. The task of providing an optimal analysis of the state of the atmosphere requires the deve...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
The atmosphere is a complex system which includes physical, chemical and biological processes. Many ...
ABSTRACT: Data assimilation is the process of integrating observational data and model predictions t...
We study the use of ensemble-based Kalman filtering of chemical observations for constraining foreca...
Abstract. We present a global aerosol assimilation system based on an Ensemble Kalman filter, which ...
Data assimilation methods are commonly used to address problems involving dynamical models and obser...
Chemical data assimilation is the process by which models use measurements to produce an optimal rep...
Abstract. In this paper we discuss variational data assimilation using the STEM atmospheric Chemical...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
International audienceData assimilation is used in atmospheric chemistry models to improve air quali...
Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construc...
In predictive geophysical model systems, uncertain initial values and model parameters jointly influ...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
Abstract. The task of providing an optimal analysis of the state of the atmosphere requires the deve...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
The atmosphere is a complex system which includes physical, chemical and biological processes. Many ...
ABSTRACT: Data assimilation is the process of integrating observational data and model predictions t...
We study the use of ensemble-based Kalman filtering of chemical observations for constraining foreca...
Abstract. We present a global aerosol assimilation system based on an Ensemble Kalman filter, which ...
Data assimilation methods are commonly used to address problems involving dynamical models and obser...
Chemical data assimilation is the process by which models use measurements to produce an optimal rep...
Abstract. In this paper we discuss variational data assimilation using the STEM atmospheric Chemical...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
International audienceData assimilation is used in atmospheric chemistry models to improve air quali...
Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construc...
In predictive geophysical model systems, uncertain initial values and model parameters jointly influ...