International audienceSimulation methods for design flood estimations in dam safety studies require fine scale precipitation data to provide quality input for hydrological models, especially for extrapolation to extreme events. This leads to use statistical models such as stochastic weather generators. The aim here is to develop a stochastic model adaptable on mountainous catchments in France and accounting for spatial and temporal dependencies in daily precipitation fields. To achieve this goal, the framework of spatial random processes is adopted here.The novelty of the model developed in this study resides in the combination of an autoregressive meta-Gaussian process accounting for the spatio-temporal dependencies and weather pattern sub...
A daily stochastic spatiotemporal precipitation generator that yields precipitation realizations tha...
International audienceAbstract Precipitation is highly variable in space and time; hence, rain gauge...
This study aims to develop a stochastic method (SM_GSTR) for generating short-time (i.e., hourly) ra...
International audienceSimulation methods for design flood estimations in dam safety studies require ...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
SummaryLarge scale rainfall models are needed for collective risk estimation in flood insurance, inf...
Precipitation is one of the most important parameters in the study of hydrology and most of the rese...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
In this paper, a framework for stochastic spatiotemporal modeling of daily precipitation in a hindca...
A stochastic weather generator has been developed to simulate long daily sequences of areal rainfall...
A method for the stochastic simulation of (rain)drop size distributions (DSDs) in space and time usi...
International audienceAbstract Stochastic rainfall generators aim to reproduce the main statistical ...
Sound spatially distributed rainfall fields including a proper spatial and temporal error structure ...
Les générateurs stochastiques de temps sont des modèles numériques capables de générer des séquences...
A daily stochastic spatiotemporal precipitation generator that yields precipitation realizations tha...
International audienceAbstract Precipitation is highly variable in space and time; hence, rain gauge...
This study aims to develop a stochastic method (SM_GSTR) for generating short-time (i.e., hourly) ra...
International audienceSimulation methods for design flood estimations in dam safety studies require ...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
A model for generating daily spatial correlated rainfall fields suitable for evaluating the impacts ...
SummaryLarge scale rainfall models are needed for collective risk estimation in flood insurance, inf...
Precipitation is one of the most important parameters in the study of hydrology and most of the rese...
The objective of the current work is to present a methodology for simulation of stochastic spatial d...
In this paper, a framework for stochastic spatiotemporal modeling of daily precipitation in a hindca...
A stochastic weather generator has been developed to simulate long daily sequences of areal rainfall...
A method for the stochastic simulation of (rain)drop size distributions (DSDs) in space and time usi...
International audienceAbstract Stochastic rainfall generators aim to reproduce the main statistical ...
Sound spatially distributed rainfall fields including a proper spatial and temporal error structure ...
Les générateurs stochastiques de temps sont des modèles numériques capables de générer des séquences...
A daily stochastic spatiotemporal precipitation generator that yields precipitation realizations tha...
International audienceAbstract Precipitation is highly variable in space and time; hence, rain gauge...
This study aims to develop a stochastic method (SM_GSTR) for generating short-time (i.e., hourly) ra...