International audienceThe synthetic generation of random fields with specified probability distribution, correlation structure and probability of no-rain areas is used as the basis for the formulation of a stochastic space-time rainfall model conditional on rain gauge observations. A new procedure for conditioning while preserving intermittence is developed to provide constraints to Monte Carlo realisations of possible rainfall scenarios. The method addresses the properties of the convolution operator involved in generating random field realisations and is actually independent of the numerical algorithm used for unconditional simulation. It requires only the solution of a linear system of algebraic equations the order of which is given by t...
This study gives a phenomenologically based stochastic model of space -time rainfall. Specifically, ...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
The synthetic generation of random fields with specified probability distribution, correlation struc...
International audienceIn regions characterized by a great inter-annual variability or by decadal-sca...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
A method for the stochastic simulation of (rain)drop size distributions (DSDs) in space and time usi...
Gibbs sampling is used to simulate Sahelian rainfields conditional to an areal estimate provided eit...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]ARCEAUSpace-time rainfall simulation is useful to study questio...
International audienceAt subdaily resolution, rain intensity exhibits a strong variability in space ...
International audienceAbstract Stochastic rainfall generators aim to reproduce the main statistical ...
The quantification of spatial rainfall is critical for distributed hydrological modeling. Rainfall s...
This study gives a phenomenologically based stochastic model of space-time rainfall. Specifically, t...
International audienceThe need for the development of a method for generating an ensemble of rainfal...
A stochastic method to disaggregate rainfall fields into DSD fields is proposed. It is based on a pr...
This study gives a phenomenologically based stochastic model of space -time rainfall. Specifically, ...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
The synthetic generation of random fields with specified probability distribution, correlation struc...
International audienceIn regions characterized by a great inter-annual variability or by decadal-sca...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
A method for the stochastic simulation of (rain)drop size distributions (DSDs) in space and time usi...
Gibbs sampling is used to simulate Sahelian rainfields conditional to an areal estimate provided eit...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]ARCEAUSpace-time rainfall simulation is useful to study questio...
International audienceAt subdaily resolution, rain intensity exhibits a strong variability in space ...
International audienceAbstract Stochastic rainfall generators aim to reproduce the main statistical ...
The quantification of spatial rainfall is critical for distributed hydrological modeling. Rainfall s...
This study gives a phenomenologically based stochastic model of space-time rainfall. Specifically, t...
International audienceThe need for the development of a method for generating an ensemble of rainfal...
A stochastic method to disaggregate rainfall fields into DSD fields is proposed. It is based on a pr...
This study gives a phenomenologically based stochastic model of space -time rainfall. Specifically, ...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...