In this paper an application of clustering algorithms for statistical downscaling in short-range weather forecasts is presented. The advantages of this technique compared with standard nearest-neighbors analog methods are described both in terms of computational efficiency and forecast skill. Some validation results of daily precip-itation and maximum wind speed operative downscaling (lead time 1–5 days) on a network of 100 stations in the Iberian Peninsula are reported for the period 1998–99. These results indicate that the weighting clustering method introduced in this paper clearly outperforms standard analog techniques for infrequent, or extreme, events (precipitation. 20 mm; wind. 80 km h21). Outputs of an operative circulation model o...
A precipitation downscaling method is presented using precipitation from a general circulation model...
International audienceThis study investigates dynamically different data-driven methods, specificall...
Subdaily rainfall data, though essential for applications in many fields, is not as readily availabl...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper we present an application of clustering algorithms for statistical downscaling in shor...
In this paper we present the application of self-organizying maps for statis-tical downscaling in sh...
International audienceAlthough weather regimes are often used as a primary step in many statistical ...
[1] Statistical downscaling provides a technique for deriving local-scale information of precipitati...
A weather pattern clustering method is applied and calibrated to Argentinean daily weather stations ...
Dynamical downscaling has been applied to global ensemble forecasts to assess its impact for four ca...
Statistical downscaling methods (SDMs) are techniques used to downscale and/or bias-correct climate ...
Statistical downscaling methods seek to model the relationship between large scale atmospheric circu...
ABSTRACT: In this study we analyze and simulate (with statistical downscaling techniques) the snow t...
The occurrence of mid-latitude windstorms is related to strong socio-economic effects. For detailed ...
A precipitation downscaling method is presented using precipitation from a general circulation model...
International audienceThis study investigates dynamically different data-driven methods, specificall...
Subdaily rainfall data, though essential for applications in many fields, is not as readily availabl...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper we present an application of clustering algorithms for statistical downscaling in shor...
In this paper we present the application of self-organizying maps for statis-tical downscaling in sh...
International audienceAlthough weather regimes are often used as a primary step in many statistical ...
[1] Statistical downscaling provides a technique for deriving local-scale information of precipitati...
A weather pattern clustering method is applied and calibrated to Argentinean daily weather stations ...
Dynamical downscaling has been applied to global ensemble forecasts to assess its impact for four ca...
Statistical downscaling methods (SDMs) are techniques used to downscale and/or bias-correct climate ...
Statistical downscaling methods seek to model the relationship between large scale atmospheric circu...
ABSTRACT: In this study we analyze and simulate (with statistical downscaling techniques) the snow t...
The occurrence of mid-latitude windstorms is related to strong socio-economic effects. For detailed ...
A precipitation downscaling method is presented using precipitation from a general circulation model...
International audienceThis study investigates dynamically different data-driven methods, specificall...
Subdaily rainfall data, though essential for applications in many fields, is not as readily availabl...