Obtaining accurate high-resolution representations of model outputs is essential to describe the system dynamics. In general, however, only spatially- and temporally-coarse observations of the system states are available. These observations can also be corrupted by noise. Downscaling is a process/scheme in which one uses coarse scale observations to reconstruct the high-resolution solution of the system states. Continuous Data Assimilation (CDA) is a recently introduced downscaling algorithm that constructs an increasingly accurate representation of the system states by continuously nudging the large scales using the coarse observations. We introduce a Discrete Data Assimilation (DDA) algorithm as a downscaling algorithm based on CDA with d...
Data assimilation for systems possessing many scales of motions is a substantial methodological and ...
A 24-member ensemble of 1-h high-resolution forecasts over the Southern United Kingdom is used to st...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...
International audienceObtaining accurate high-resolution representations of model outputs is essenti...
Efficient downscaling of large ensembles of coarse-scale information is crucial in several applicati...
We consider a recently introduced continuous data assimilation (CDA) approach for downscaling a coar...
We introduce a continuous (downscaling) data assimilation algorithm for the 2D Bénard convection pro...
Continuous data assimilation (CDA) is successfully implemented for the first time for efficient dyna...
Recent progress in machine learning has shown how to forecast and, to some extent, learn the dynamic...
In this paper we survey the various implementations of a new data assimilation (downscaling) algorit...
In this paper we propose a continuous data assimilation (downscaling) algorithm for the Bénard conve...
We show how the 3DVAR data assimilation methodology can be used in the astrophysical context of a tw...
We propose, analyze, and test a novel continuous data assimilation two-phase flow algorithm for rese...
Based on a previously introduced downscaling data assimilation algorithm, which employs a nudging te...
Accurate estimation of error covariances (both background and observation) is crucial for efficient ...
Data assimilation for systems possessing many scales of motions is a substantial methodological and ...
A 24-member ensemble of 1-h high-resolution forecasts over the Southern United Kingdom is used to st...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...
International audienceObtaining accurate high-resolution representations of model outputs is essenti...
Efficient downscaling of large ensembles of coarse-scale information is crucial in several applicati...
We consider a recently introduced continuous data assimilation (CDA) approach for downscaling a coar...
We introduce a continuous (downscaling) data assimilation algorithm for the 2D Bénard convection pro...
Continuous data assimilation (CDA) is successfully implemented for the first time for efficient dyna...
Recent progress in machine learning has shown how to forecast and, to some extent, learn the dynamic...
In this paper we survey the various implementations of a new data assimilation (downscaling) algorit...
In this paper we propose a continuous data assimilation (downscaling) algorithm for the Bénard conve...
We show how the 3DVAR data assimilation methodology can be used in the astrophysical context of a tw...
We propose, analyze, and test a novel continuous data assimilation two-phase flow algorithm for rese...
Based on a previously introduced downscaling data assimilation algorithm, which employs a nudging te...
Accurate estimation of error covariances (both background and observation) is crucial for efficient ...
Data assimilation for systems possessing many scales of motions is a substantial methodological and ...
A 24-member ensemble of 1-h high-resolution forecasts over the Southern United Kingdom is used to st...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...