The analogue method is a statistical downscaling method for precipitation prediction. It uses similarity in terms of synoptic-scale predictors with situations in the past in order to provide a probabilistic prediction for the day of interest. It has been used for decades in a context of weather or flood forecasting, and is more recently also applied to climate studies, whether for reconstruction of past weather conditions or future climate impact studies. In order to evaluate the relationship between synoptic scale predictors and the local weather variable of interest, e.g. precipitation, reanalysis datasets are necessary. Nowadays, the number of available reanalysis datasets increases. These are generated by different atmospheric models wi...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...
Statistical downscaling (SD) and bias adjustment (BA) methods are routinely used to produce regional...
Statistical downscaling (SD) procedures have been frequently used for assessing the potential impact...
Statistical downscaling techniques based on a perfect prognosis approach often rely on reanalyses to...
Statistical downscaling based on a perfect prognosis approach often relies on global reanalyses to i...
Perfect prognosis statistical downscaling relies on the statistical relationships established using ...
The Analogue Method (AM) aims at forecasting a local meteorological variable of interest (the predic...
Analog methods (AMs) allow for the prediction of local meteorological variables of interest(predicta...
In this study, a worldwide overview on the expected sensitivity of downscaling studies to reanalysis...
Global reanalyses provide the most consistent atmospheric circulation datasets for many dynamical pr...
This work shows that local-scale climate projections obtained by means of statistical downscaling ar...
A precipitation downscaling method is presented using precipitation from a general circulation model...
Analogue methods (AMs) rely on the hypothesis that similar situations, in terms of atmospheric circu...
International audienceDownscaling of climate model data is essential to local and regional impact an...
A range of different statistical downscaling models was calibrated using both observed and general c...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...
Statistical downscaling (SD) and bias adjustment (BA) methods are routinely used to produce regional...
Statistical downscaling (SD) procedures have been frequently used for assessing the potential impact...
Statistical downscaling techniques based on a perfect prognosis approach often rely on reanalyses to...
Statistical downscaling based on a perfect prognosis approach often relies on global reanalyses to i...
Perfect prognosis statistical downscaling relies on the statistical relationships established using ...
The Analogue Method (AM) aims at forecasting a local meteorological variable of interest (the predic...
Analog methods (AMs) allow for the prediction of local meteorological variables of interest(predicta...
In this study, a worldwide overview on the expected sensitivity of downscaling studies to reanalysis...
Global reanalyses provide the most consistent atmospheric circulation datasets for many dynamical pr...
This work shows that local-scale climate projections obtained by means of statistical downscaling ar...
A precipitation downscaling method is presented using precipitation from a general circulation model...
Analogue methods (AMs) rely on the hypothesis that similar situations, in terms of atmospheric circu...
International audienceDownscaling of climate model data is essential to local and regional impact an...
A range of different statistical downscaling models was calibrated using both observed and general c...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...
Statistical downscaling (SD) and bias adjustment (BA) methods are routinely used to produce regional...
Statistical downscaling (SD) procedures have been frequently used for assessing the potential impact...