We applied a simple statistical downscaling procedure for transforming daily global climate model (GCM) rainfall to the scale of an agricultural experimental station in Katumani, Kenya. The transformation made was two-fold. First, we corrected the rainfall frequency bias of the climate model by truncating its daily rainfall cumulative distribution into the station’s distribution based on a prescribed observed wet-day threshold. Then, we corrected the climate model rainfall intensity bias by mapping its truncated rainfall distribution into the station’s truncated distribution. Further improvements were made to the bias corrected GCM rainfall by linking it with a stochastic disaggregation scheme to correct the time structure problem inherent ...
We describe a generalised downscaling and data generation method that takes the outputs of a General...
Knowledge about future weather conditions, such as when the rains will fall and for how long, is cru...
Regional climate simulations are often found to have significant biases. As one of the most importan...
Global climate models (GCMs) are promising for crop yield predictions because of their ability to si...
General circulation models (GCMs), used to predict rainfall at a seasonal lead-time, tend to simulat...
Global circulation models (GCM) are increasingly capable of making relevant predictions of seasonal ...
Seasonal climate forecasts (SCF) are produced operationally in tercile-probabilities of the most lik...
A nonhomogeneous hidden Markov model (NHMM) is used to make stochastic simulations of March–August d...
Four methods of downscaling daily rainfall sequences from general circulation model (GCM) simulation...
Precipitation is highly variable in space and time; hence, rain gauge time series generally exhibit ...
International audienceDifferent CMIP exercises show that the simulations of the future/current tempe...
Abstract A method is introduced for stochastic rainfall downscaling that can be easil...
There are a number of statistical techniques that downscale coarse climate information from general ...
Downscaling techniques aim at resolving the scale discrepancy between climate change scenarios and t...
Global climate and weather models are a key tool for the prediction of future crop productivity, but...
We describe a generalised downscaling and data generation method that takes the outputs of a General...
Knowledge about future weather conditions, such as when the rains will fall and for how long, is cru...
Regional climate simulations are often found to have significant biases. As one of the most importan...
Global climate models (GCMs) are promising for crop yield predictions because of their ability to si...
General circulation models (GCMs), used to predict rainfall at a seasonal lead-time, tend to simulat...
Global circulation models (GCM) are increasingly capable of making relevant predictions of seasonal ...
Seasonal climate forecasts (SCF) are produced operationally in tercile-probabilities of the most lik...
A nonhomogeneous hidden Markov model (NHMM) is used to make stochastic simulations of March–August d...
Four methods of downscaling daily rainfall sequences from general circulation model (GCM) simulation...
Precipitation is highly variable in space and time; hence, rain gauge time series generally exhibit ...
International audienceDifferent CMIP exercises show that the simulations of the future/current tempe...
Abstract A method is introduced for stochastic rainfall downscaling that can be easil...
There are a number of statistical techniques that downscale coarse climate information from general ...
Downscaling techniques aim at resolving the scale discrepancy between climate change scenarios and t...
Global climate and weather models are a key tool for the prediction of future crop productivity, but...
We describe a generalised downscaling and data generation method that takes the outputs of a General...
Knowledge about future weather conditions, such as when the rains will fall and for how long, is cru...
Regional climate simulations are often found to have significant biases. As one of the most importan...