Remote sensing observations often have correlated errors, but the correlations are typically ignored in data assimilation for numerical weather prediction. The assumption of zero correlations is often used with data thinning methods, resulting in a loss of information. As operational centres move towards higher-resolution forecasting, there is a requirement to retain data providing detail on appropriate scales. Thus an alternative approach to dealing with observation error correlations is needed. In this article, we consider several approaches to approximating observation error correlation matrices: diagonal approximations, eigendecomposition approximations and Markov matrices. These approximations are applied in incremental variational ass...
Ensemble and reduced-rank approaches to prediction and assimilation rely on low-dimensional approxim...
To improve the quantity and impact of observations used in data assimilation it is necessary to take...
AbstractEfforts to implement variational data assimilation routines with functional ecology models a...
Remote sensing observations often have correlated errors, but the correlations are typically ignored...
Data assimilation techniques combine observations and prior model forecasts to create initial condit...
Data assimilation combines information from observations of a dynamical system with a previous fore...
The importance of prior error correlations in data assimilation has long been known, however, observ...
An important class of nonlinear weighted least-squares problems arises from the assimilation of obse...
Recent research has shown that the use of correlated observation errors in data assimilation can lea...
Data assimilation has been developed into an effective technology that can utilize a large number of...
International audienceThis paper deals with the assimilation of image-type data. Such kind of data, ...
Recent developments in numerical weather prediction have led to the use of correlated observation er...
One of the problems in numerical weather prediction is the determination of the initial state of the...
International audienceThe description of correlated observation error statistics is a challenge in d...
Data assimilation is a statistical technique for combining observations of a physical system with th...
Ensemble and reduced-rank approaches to prediction and assimilation rely on low-dimensional approxim...
To improve the quantity and impact of observations used in data assimilation it is necessary to take...
AbstractEfforts to implement variational data assimilation routines with functional ecology models a...
Remote sensing observations often have correlated errors, but the correlations are typically ignored...
Data assimilation techniques combine observations and prior model forecasts to create initial condit...
Data assimilation combines information from observations of a dynamical system with a previous fore...
The importance of prior error correlations in data assimilation has long been known, however, observ...
An important class of nonlinear weighted least-squares problems arises from the assimilation of obse...
Recent research has shown that the use of correlated observation errors in data assimilation can lea...
Data assimilation has been developed into an effective technology that can utilize a large number of...
International audienceThis paper deals with the assimilation of image-type data. Such kind of data, ...
Recent developments in numerical weather prediction have led to the use of correlated observation er...
One of the problems in numerical weather prediction is the determination of the initial state of the...
International audienceThe description of correlated observation error statistics is a challenge in d...
Data assimilation is a statistical technique for combining observations of a physical system with th...
Ensemble and reduced-rank approaches to prediction and assimilation rely on low-dimensional approxim...
To improve the quantity and impact of observations used in data assimilation it is necessary to take...
AbstractEfforts to implement variational data assimilation routines with functional ecology models a...