Systematic biases in climate models hamper their direct use in impact studies and, as a consequence, many statistical bias adjustment methods have been developed to calibrate model outputs against observations. The application of these methods in a climate change context is problematic since there is no clear understanding on how these methods may affect key magnitudes, for example, the climate change signal or trend, under different sources of uncertainty. Two relevant sources of uncertainty, often overlooked, are the sensitivity to the observational reference used to calibrate the method and the effect of the resolution mismatch between model and observations (downscaling effect). In the present work, we assess the impact of these factors...
Our goal was to investigate the influence of bias correction methods on climate simulations over the...
Climate change prediction and evaluation of its impact currently represent one of the key challenges...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...
ABSTRACT: Systematic biases in climate models hamper their direct use in impact studies and, as a co...
The assessment of climate change impacts in regions with complex orography and land-sea interfaces p...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
peer reviewedVegetation models for climate adaptation and mitigation strategies require spatially hi...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
Statistical bias-adjustment of climate 5 models’ outputs is being increasingly used for assessing th...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
Our goal was to investigate the influence of bias correction methods on climate simulations over the...
Climate change prediction and evaluation of its impact currently represent one of the key challenges...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...
ABSTRACT: Systematic biases in climate models hamper their direct use in impact studies and, as a co...
The assessment of climate change impacts in regions with complex orography and land-sea interfaces p...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
Quantile mapping (QM) represents a common post-processing technique used to connect climate simulati...
peer reviewedVegetation models for climate adaptation and mitigation strategies require spatially hi...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
Statistical bias-adjustment of climate 5 models’ outputs is being increasingly used for assessing th...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
A statistical bias correction technique is applied to twelve high-resolution climate change simulati...
Our goal was to investigate the influence of bias correction methods on climate simulations over the...
Climate change prediction and evaluation of its impact currently represent one of the key challenges...
In this study we assess the suitability of a recently introduced analog-based Model Output Statistic...