Stochastic rainfall downscaling methods usually do not take into account orographic effects or local precipitation features at spatial scales finer than those resolved by the large-scale input field. For this reason they may be less reliable in areas with complex topography or with sub-grid surface heterogeneities. Here we test a simple method to introduce realistic fine-scale precipitation patterns into the downscaled fields, with the objective of producing downscaled data more suitable for climatological and hydrological applications as well as for extreme event studies. The proposed method relies on the availability of a reference fine-scale precipitation climatology from which corrective weights for the downscaled fields are d...
High-resolution climate data O(1km) at the catchment scale can be of great value to both hydrologica...
This paper introduces Prec-DWARF (Precipitation Downscaling With Adaptable Random Forests), a novel ...
Statistical downscaling based on a perfect prognosis approach often relies on global reanalyses to i...
Stochastic rainfall downscaling methods usually do not take into account orographic effects or local...
Abstract Precipitation extremes and small-scale variability are essential drivers in ...
Abstract A method is introduced for stochastic rainfall downscaling that can be easil...
International audienceThe problem of rainfall downscaling in a mountainous region is discussed, and ...
Precipitation downscaling improves the coarse resolution and poor representation of precipitation in...
Much of our knowledge about future changes in precipitation relies on global (GCM) and/or regional c...
Precipitation is an essential input parameter for land surface models because it controls a large va...
International audienceIn the absence of a full deterministic modelling of small-scale rainfall, it i...
A precipitation downscaling method is presented using precipitation from a general circulation model...
Much of our knowledge about future changes in precipitation relies on global (GCMs) and/or regional ...
Reliable prediction of heavy precipitation events causing floods in a world of changing climate is c...
High-resolution climate data O(1km) at the catchment scale can be of great value to both hydrologica...
This paper introduces Prec-DWARF (Precipitation Downscaling With Adaptable Random Forests), a novel ...
Statistical downscaling based on a perfect prognosis approach often relies on global reanalyses to i...
Stochastic rainfall downscaling methods usually do not take into account orographic effects or local...
Abstract Precipitation extremes and small-scale variability are essential drivers in ...
Abstract A method is introduced for stochastic rainfall downscaling that can be easil...
International audienceThe problem of rainfall downscaling in a mountainous region is discussed, and ...
Precipitation downscaling improves the coarse resolution and poor representation of precipitation in...
Much of our knowledge about future changes in precipitation relies on global (GCM) and/or regional c...
Precipitation is an essential input parameter for land surface models because it controls a large va...
International audienceIn the absence of a full deterministic modelling of small-scale rainfall, it i...
A precipitation downscaling method is presented using precipitation from a general circulation model...
Much of our knowledge about future changes in precipitation relies on global (GCMs) and/or regional ...
Reliable prediction of heavy precipitation events causing floods in a world of changing climate is c...
High-resolution climate data O(1km) at the catchment scale can be of great value to both hydrologica...
This paper introduces Prec-DWARF (Precipitation Downscaling With Adaptable Random Forests), a novel ...
Statistical downscaling based on a perfect prognosis approach often relies on global reanalyses to i...