Global climate model simulations inherently contain multiple biases that, when used as boundary conditions for regional climate models, have the potential to produce poor downscaled simulations. Removing these biases before downscaling can potentially improve regional climate change impact assessment. In particular, reducing the low-frequency variability biases in atmospheric variables as well as modeled rainfall is important for hydrological impact assessment, predominantly for the improved simulation of floods and droughts. The impact of this bias in the lateral boundary conditions driving the dynamical downscaling has not been explored before. Here the use of three approaches for correcting the lateral boundary biases including mean, var...
Addressing systematic biases in regional climate model simulations of extreme rainfall is a necessar...
Growing human population, urban expansion and increased standard of living coupled with climate chan...
The present study investigates a statistical approach for the downscaling of climate simulations foc...
Water resource managers need to assess changes in low-frequency rainfall variability for future clim...
Regional climate models are prone to biases in precipitation that are problematic for use in impact ...
Biases in climate model simulations are one of the biggest challenges in climate change impact asses...
International audienceA novel climate downscaling methodology that attempts to correct climate simul...
Regional climate models (RCMs) are used to dynamically downscale global climate models (GCMs) to pro...
In hydrological climate-change impact studies, regional climate models (RCMs) are commonly used to t...
Many studies bias correct daily precipitation from climate models to match the observed precipitatio...
Abstract: There are many different techniques for dynamical downscaling of global climate change pro...
Use of General Circulation Model (GCM) precipitation and evapotranspiration sequences for hydrologic...
High-resolution, bias-corrected climate data is necessary for climate impact studies and modeling ef...
Understanding climate change impact on Intensity-Frequency-Duration (IFD) design rainfall is of crit...
Quantifying the effects of future changes in the frequency of precipitation extremes is a key challe...
Addressing systematic biases in regional climate model simulations of extreme rainfall is a necessar...
Growing human population, urban expansion and increased standard of living coupled with climate chan...
The present study investigates a statistical approach for the downscaling of climate simulations foc...
Water resource managers need to assess changes in low-frequency rainfall variability for future clim...
Regional climate models are prone to biases in precipitation that are problematic for use in impact ...
Biases in climate model simulations are one of the biggest challenges in climate change impact asses...
International audienceA novel climate downscaling methodology that attempts to correct climate simul...
Regional climate models (RCMs) are used to dynamically downscale global climate models (GCMs) to pro...
In hydrological climate-change impact studies, regional climate models (RCMs) are commonly used to t...
Many studies bias correct daily precipitation from climate models to match the observed precipitatio...
Abstract: There are many different techniques for dynamical downscaling of global climate change pro...
Use of General Circulation Model (GCM) precipitation and evapotranspiration sequences for hydrologic...
High-resolution, bias-corrected climate data is necessary for climate impact studies and modeling ef...
Understanding climate change impact on Intensity-Frequency-Duration (IFD) design rainfall is of crit...
Quantifying the effects of future changes in the frequency of precipitation extremes is a key challe...
Addressing systematic biases in regional climate model simulations of extreme rainfall is a necessar...
Growing human population, urban expansion and increased standard of living coupled with climate chan...
The present study investigates a statistical approach for the downscaling of climate simulations foc...