none3noChaos, Data AssimilationBased on a limited number of noisy observations, estimation algorithms provide a complete description of the state of a system at current time. Estimation algorithms that go under the name of assimilation in the unstable subspace (AUS) exploit the nonlinear stability properties of the forecasting model in their formulation. Errors that grow due to sensitivity to initial conditions are efficiently removed by confining the analysis solution in the unstable and neutral subspace of the system, the subspace spanned by Lyapunov vectors with positive and zero exponents, while the observational noise does not disturb the system along the stable directions. The formulation of the AUS approach in the context of four-dim...
none3siData assimilation (DA) aims at optimally merging observational data and model outputs to crea...
Results of targeting and assimilation experiments in a quasi-geostrophic atmospheric model are prese...
Chaos is ubiquitous in physical systems. The associated sensitivity to initial conditions is a signi...
Based on a limited number of noisy observations, estimation algorithms provide a complete descriptio...
Chaos, Data AssimilationBased on a limited number of noisy observations, estimation algorithms provi...
The performance of (ensemble) Kalman filters used for data assimilation in the geosciences criticall...
International audienceKey a priori information used in 4D-Var is the knowledge of the system's evolu...
It is well understood that dynamic instability is among the primary drivers of forecast uncertainty ...
We study prediction-assimilation systems, which have become routine in meteorology and oceanography ...
Abstract. When the Extended Kalman Filter is applied to a chaotic system, the rank of the error cova...
We study prediction-assimilation systems, which have become routine in meteorology and oceanography ...
none6siThe characteristics of the model dynamics are critical in the performance of (ensemble) Kalma...
none3siData assimilation (DA) aims at optimally merging observational data and model outputs to crea...
Results of targeting and assimilation experiments in a quasi-geostrophic atmospheric model are prese...
Chaos is ubiquitous in physical systems. The associated sensitivity to initial conditions is a signi...
Based on a limited number of noisy observations, estimation algorithms provide a complete descriptio...
Chaos, Data AssimilationBased on a limited number of noisy observations, estimation algorithms provi...
The performance of (ensemble) Kalman filters used for data assimilation in the geosciences criticall...
International audienceKey a priori information used in 4D-Var is the knowledge of the system's evolu...
It is well understood that dynamic instability is among the primary drivers of forecast uncertainty ...
We study prediction-assimilation systems, which have become routine in meteorology and oceanography ...
Abstract. When the Extended Kalman Filter is applied to a chaotic system, the rank of the error cova...
We study prediction-assimilation systems, which have become routine in meteorology and oceanography ...
none6siThe characteristics of the model dynamics are critical in the performance of (ensemble) Kalma...
none3siData assimilation (DA) aims at optimally merging observational data and model outputs to crea...
Results of targeting and assimilation experiments in a quasi-geostrophic atmospheric model are prese...
Chaos is ubiquitous in physical systems. The associated sensitivity to initial conditions is a signi...