Downscaling of climate model data is essential to local and regional impact analysis. We compare two methods of statistical downscaling to produce continuous, gridded time series of precipitation and surface air temperature at a 1/8-degree (approximately 140 km2 per grid cell) resolution over the western U.S. We use NCEP/NCAR Reanalysis data from 1950–1999 as a surrogate General Circulation Model (GCM). The two methods included are constructed analogues (CA) and a bias correction and spatial downscaling (BCSD), both of which have been shown to be skillful in different settings, and BCSD has been used extensively in hydrologic impact analysis. Both methods use the coarse scale Reanalysis fields of precipitation and temperature as predictors ...
Six approaches for downscaling climate model outputs for use in hydrologic simulation were evaluated...
This study evaluates statistical downscaling techniques using different metrics and compares climate...
Statistical downscaling techniques address the disparity between the coarse spatial scales of numeri...
Downscaling of climate model data is essential to local and regional impact analysis. We compare two...
Three statistical downscaling methods were applied to NCEP/NCAR reanalysis (used as a surrogate for ...
Global Climate Models (GCMs) are the typical sources of future climate data required for impact asse...
Regional climate impact assessments require high-resolution projections to resolve local factors tha...
There are a number of statistical techniques that downscale coarse climate information from general ...
High-resolution, bias-corrected climate data is necessary for climate impact studies and modeling ef...
Over the past decade, statistical procedures have been employed to downscale the outputs from global...
There are often large biases associated with climate predictions and these are problematic when it c...
A range of different statistical downscaling models was calibrated using both observed and general c...
As decision makers evaluate future water resources, they often consider the potential impact of clim...
A precipitation downscaling method is presented using precipitation from a general circulation model...
For the purpose of producing datasets for regional scale climate change research and application, th...
Six approaches for downscaling climate model outputs for use in hydrologic simulation were evaluated...
This study evaluates statistical downscaling techniques using different metrics and compares climate...
Statistical downscaling techniques address the disparity between the coarse spatial scales of numeri...
Downscaling of climate model data is essential to local and regional impact analysis. We compare two...
Three statistical downscaling methods were applied to NCEP/NCAR reanalysis (used as a surrogate for ...
Global Climate Models (GCMs) are the typical sources of future climate data required for impact asse...
Regional climate impact assessments require high-resolution projections to resolve local factors tha...
There are a number of statistical techniques that downscale coarse climate information from general ...
High-resolution, bias-corrected climate data is necessary for climate impact studies and modeling ef...
Over the past decade, statistical procedures have been employed to downscale the outputs from global...
There are often large biases associated with climate predictions and these are problematic when it c...
A range of different statistical downscaling models was calibrated using both observed and general c...
As decision makers evaluate future water resources, they often consider the potential impact of clim...
A precipitation downscaling method is presented using precipitation from a general circulation model...
For the purpose of producing datasets for regional scale climate change research and application, th...
Six approaches for downscaling climate model outputs for use in hydrologic simulation were evaluated...
This study evaluates statistical downscaling techniques using different metrics and compares climate...
Statistical downscaling techniques address the disparity between the coarse spatial scales of numeri...