This study presents a novel bias correction scheme for Regional Climate Model (RCM) precipitation ensembles. A primary advantage of using model ensembles for climate change impact studies is that the uncertainties associated with the systematic error can be quantified through the ensemble spread. Currently,however, most of the conventional bias correction methods adjust all the ensemble members to one reference observation. As a result, the ensemble spread is degraded during bias correction. Since the observation is onlyone case of many possible realisations due to the climate natural variability, a successful bias correction scheme should preserve the ensemble spread within the bounds of its natural variability (i.e. sampling uncertainty)....
Global climate model (GCM) output typically needs to be bias corrected before it can be used for cli...
Quantifying the effects of future changes in the frequency of precipitation extremes is a key challe...
Precipitation is highly variable in space and time; hence, rain gauge time series generally exhibit ...
This study presents a novel bias correction scheme for regional climate model (RCM) precipitation en...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
The systemic biases of Regional Climate Models (RCMs) impede their application in regional hydrologi...
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...
Our goal was to investigate the influence of bias correction methods on climate simulations over the...
A statistical bias correction technique is applied to a set of high resolution climate change simula...
Various methods exist for correcting biases in climate model precipitation data. This study has inve...
A statistical bias correction technique is applied to a set of high resolution climate change simula...
Climate change prediction and evaluation of its impact currently represent one of the key challenges...
It is well known that output from climate models cannot be used to force hydrological simulations wi...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
Global climate model (GCM) output typically needs to be bias corrected before it can be used for cli...
Quantifying the effects of future changes in the frequency of precipitation extremes is a key challe...
Precipitation is highly variable in space and time; hence, rain gauge time series generally exhibit ...
This study presents a novel bias correction scheme for regional climate model (RCM) precipitation en...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
The systemic biases of Regional Climate Models (RCMs) impede their application in regional hydrologi...
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...
Our goal was to investigate the influence of bias correction methods on climate simulations over the...
A statistical bias correction technique is applied to a set of high resolution climate change simula...
Various methods exist for correcting biases in climate model precipitation data. This study has inve...
A statistical bias correction technique is applied to a set of high resolution climate change simula...
Climate change prediction and evaluation of its impact currently represent one of the key challenges...
It is well known that output from climate models cannot be used to force hydrological simulations wi...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
Global climate model (GCM) output typically needs to be bias corrected before it can be used for cli...
Quantifying the effects of future changes in the frequency of precipitation extremes is a key challe...
Precipitation is highly variable in space and time; hence, rain gauge time series generally exhibit ...