In numerical weather prediction (NWP) data assimilation (DA) methods are used to combine available observations with numerical model estimates. This is done by minimising measures of error on both observations and model estimates with more weight given to data that can be more trusted. For any DA method an estimate of the initial forecast error covariance matrix is required. For convective scale data assimilation, however, the properties of the error covariances are not well understood. An effective way to investigate covariance properties in the presence of convection is to use an ensemble-based method for which an estimate of the error covariance is readily available at each time step. In this work, we investigate the performance of th...
Ensemble-based data assimilation is a state estimation technique that uses short-term ensemble forec...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...
Data assimilation (DA) methods combine a prior forecast (background state) with the latest observati...
Atmospheric data assimilation has now started to deal with high model resolution scales of O(lkm) wh...
A 24-member ensemble of 1-h high-resolution forecasts over the Southern United Kingdom is used to st...
The applications of data assimilation on convective scales require a numerical model of the atmosphe...
To account for model error on multiple scales in convective-scale data assimilation, we incorporate ...
Thesis (Ph. D.)--University of Washington, 2007.Atmospheric predictability depends in part on the so...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
A new approach for improving the accuracy of data assimilation, by trading numerical precision for e...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
A new approach is introduced to assimilate cloud information into a convection-permitting numerical ...
Insufficient model resolution is one source of model error in numerical weather predictions. Meth-od...
Data assimilation is a promising approach to obtain climate reconstructions that are both consistent...
Non-Gaussian forecast error is a challenge for ensemble-based data assimilation (DA), particularly f...
Ensemble-based data assimilation is a state estimation technique that uses short-term ensemble forec...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...
Data assimilation (DA) methods combine a prior forecast (background state) with the latest observati...
Atmospheric data assimilation has now started to deal with high model resolution scales of O(lkm) wh...
A 24-member ensemble of 1-h high-resolution forecasts over the Southern United Kingdom is used to st...
The applications of data assimilation on convective scales require a numerical model of the atmosphe...
To account for model error on multiple scales in convective-scale data assimilation, we incorporate ...
Thesis (Ph. D.)--University of Washington, 2007.Atmospheric predictability depends in part on the so...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
A new approach for improving the accuracy of data assimilation, by trading numerical precision for e...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
A new approach is introduced to assimilate cloud information into a convection-permitting numerical ...
Insufficient model resolution is one source of model error in numerical weather predictions. Meth-od...
Data assimilation is a promising approach to obtain climate reconstructions that are both consistent...
Non-Gaussian forecast error is a challenge for ensemble-based data assimilation (DA), particularly f...
Ensemble-based data assimilation is a state estimation technique that uses short-term ensemble forec...
To account for model error on multiple scales in convective‐scale data assimilation, we incorporate ...
Data assimilation (DA) methods combine a prior forecast (background state) with the latest observati...