AbstractWe present a method to estimate spatially and temporally variable uncertainty of areal precipitation data. The aim of the method is to merge measurements from different sources, remote sensing and in situ, into a combined precipitation product and to provide an associated dynamic uncertainty estimate. This estimate should provide an accurate representation of uncertainty both in time and space, an adjustment to additional observations merged into the product through data assimilation, and flow dependency. Such a detailed uncertainty description is important for example to generate precipitation ensembles for probabilistic hydrological modelling or to specify accurate error covariances when using precipitation observations for data a...
International audienceA simple measure of the uncertainty associated with using radar-derived rainfa...
When using climate data for various applications, users are confronted with the difficulty to assess...
International audienceEnsemble estimates based on multiple datasets are frequently applied once many...
We present a method to estimate spatially and temporally variable uncertainty of areal precipitation...
We present a method to estimate spatially and temporally variable uncertainty of areal precipitation...
This work introduces a new variational Bayes data assimilation method for the stochastic estimation ...
This work introduces a new variational Bayes data assimilation method for the stochastic estimation ...
Ensemble-based data assimilation techniques are often applied to land surface models in order to est...
Nowcasting precipitation, that is, accurately predicting its location and intensity minutes to a few...
The application of radar quantitative precipitation estimation (QPE) to hydrology and water quality ...
Sound spatially distributed rainfall fields including a proper spatial and temporal error structure ...
This paper introduces an uncertainty model for the quantitatively estimate precipitation using weat...
Weather radars have significantly improved our ability to measure and understand rainfall processes,...
<p>Weather radars have significantly improved our ability to measure and understand rainfall<br> pro...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Civil and Environmental Enginee...
International audienceA simple measure of the uncertainty associated with using radar-derived rainfa...
When using climate data for various applications, users are confronted with the difficulty to assess...
International audienceEnsemble estimates based on multiple datasets are frequently applied once many...
We present a method to estimate spatially and temporally variable uncertainty of areal precipitation...
We present a method to estimate spatially and temporally variable uncertainty of areal precipitation...
This work introduces a new variational Bayes data assimilation method for the stochastic estimation ...
This work introduces a new variational Bayes data assimilation method for the stochastic estimation ...
Ensemble-based data assimilation techniques are often applied to land surface models in order to est...
Nowcasting precipitation, that is, accurately predicting its location and intensity minutes to a few...
The application of radar quantitative precipitation estimation (QPE) to hydrology and water quality ...
Sound spatially distributed rainfall fields including a proper spatial and temporal error structure ...
This paper introduces an uncertainty model for the quantitatively estimate precipitation using weat...
Weather radars have significantly improved our ability to measure and understand rainfall processes,...
<p>Weather radars have significantly improved our ability to measure and understand rainfall<br> pro...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Civil and Environmental Enginee...
International audienceA simple measure of the uncertainty associated with using radar-derived rainfa...
When using climate data for various applications, users are confronted with the difficulty to assess...
International audienceEnsemble estimates based on multiple datasets are frequently applied once many...