22 pagesInternational audienceDownscaling seasonal rainfall predictions to daily time-scale, for crop yield simulation for instance, can be performed using stochastic generators (SGs). The spatial interpolation of the SG parameters is required to generate rainfall time-series at ungauged places. A methodology is defined which makes use of topography to interpolate these parameters, in a region with a rugged terrain covering Kenya and north-eastern Tanzania. A first-order Markov chain was used to model rainfall occurrence, and a gamma distribution was used to model amounts. The 2 para meters of the Markov models, p01 and p11, and the 2 parameters of the gamma distribution are computed at 121 stations. The Kolmogorov-Smirnov test for goodness...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
Weather generators are tools developed to create synthetic daily weather data over long periods of t...
22 pagesInternational audienceDownscaling seasonal rainfall predictions to daily time-scale, for cro...
This study examined the extent of seasonal rainfall variability, drought occurrence, and the efficac...
Evaluating a range of scenarios that accurately reflect precipitation variability is critical for wa...
This paper describes a methodology for simulating rainfall in dekads across a set of spatial units i...
This study examined the extent of seasonal rainfall variability, drought occurrence, and the efficac...
Rainfall is the main source of irrigation water in the northwest part of Bangladesh where the inhabi...
International audienceStochastic rainfall generators are probabilistic models of rainfall space–time...
International audienceStatistical models were defined for explaining the spatial distribution of rai...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
Rain-fed agriculture is extremely important in sub-Saharan Africa, thus the ability to forecast and ...
Precipitation is one of the most important parameters in the study of hydrology and most of the rese...
This dataset contains gridded estimates of the skillful spatial scales of seasonal rainfall forecast...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
Weather generators are tools developed to create synthetic daily weather data over long periods of t...
22 pagesInternational audienceDownscaling seasonal rainfall predictions to daily time-scale, for cro...
This study examined the extent of seasonal rainfall variability, drought occurrence, and the efficac...
Evaluating a range of scenarios that accurately reflect precipitation variability is critical for wa...
This paper describes a methodology for simulating rainfall in dekads across a set of spatial units i...
This study examined the extent of seasonal rainfall variability, drought occurrence, and the efficac...
Rainfall is the main source of irrigation water in the northwest part of Bangladesh where the inhabi...
International audienceStochastic rainfall generators are probabilistic models of rainfall space–time...
International audienceStatistical models were defined for explaining the spatial distribution of rai...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
Rain-fed agriculture is extremely important in sub-Saharan Africa, thus the ability to forecast and ...
Precipitation is one of the most important parameters in the study of hydrology and most of the rese...
This dataset contains gridded estimates of the skillful spatial scales of seasonal rainfall forecast...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
Weather generators are tools developed to create synthetic daily weather data over long periods of t...