The authors present a statistical procedure to estimate the probability distributions of storm characteristics. The approach uses recent advances in stochastic hydrological modeling. The temporaldynamics of rainfall are modeled via a reward alternating renewal process that describes wet and dry phases ofstorms. In particular, the wet phase is modeled as a rectangular pulse process with dependent random duration and intensity; the global dependence structure is described using multidimensional copulas. The marginal distributions are described by Generalized Pareto laws. The authors derive both the storm volume statistics and the rainfall volume distribution within a fixed temporal window preceding a storm. Based on these results, they calcul...
In previous studies, different types of precipitation (for example convective and stratiform) were m...
The analysis and simulation of rainfall time series on fine time scales require the use of special t...
Hydrometeorological and radio propagation applications can benefit from the capability to model the...
Stochastic models of rainfall, usually based on Poisson arrivals of rectangular pulses, generally as...
Several of the existing rainfall models involve diverse assumptions, a variety of uncertain paramete...
This study gives a phenomenologically based stochastic model of space-time rainfall. Specifically, t...
In many hydrological models, such as those derived by analytical probabilistic methods, the precipit...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
This study gives a phenomenologically based stochastic model of space -time rainfall. Specifically, ...
Pair-copula construction methodology has been explored to model the dependence structure between net...
Rainfall is essential for the design of many hydraulic structures. In particular, rainfall data are ...
In this paper, an event-based model is presented which enables to fully and accurately describe (in ...
Occurrence of rainstorm events can be characterized by the number of events, storm duration, rainfal...
Weather radars provide invaluable data to characterize rainstorms spatially and temporally. A correc...
Stormwater detention tanks are frequently used as a structural measure for mitigating impacts of com...
In previous studies, different types of precipitation (for example convective and stratiform) were m...
The analysis and simulation of rainfall time series on fine time scales require the use of special t...
Hydrometeorological and radio propagation applications can benefit from the capability to model the...
Stochastic models of rainfall, usually based on Poisson arrivals of rectangular pulses, generally as...
Several of the existing rainfall models involve diverse assumptions, a variety of uncertain paramete...
This study gives a phenomenologically based stochastic model of space-time rainfall. Specifically, t...
In many hydrological models, such as those derived by analytical probabilistic methods, the precipit...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
This study gives a phenomenologically based stochastic model of space -time rainfall. Specifically, ...
Pair-copula construction methodology has been explored to model the dependence structure between net...
Rainfall is essential for the design of many hydraulic structures. In particular, rainfall data are ...
In this paper, an event-based model is presented which enables to fully and accurately describe (in ...
Occurrence of rainstorm events can be characterized by the number of events, storm duration, rainfal...
Weather radars provide invaluable data to characterize rainstorms spatially and temporally. A correc...
Stormwater detention tanks are frequently used as a structural measure for mitigating impacts of com...
In previous studies, different types of precipitation (for example convective and stratiform) were m...
The analysis and simulation of rainfall time series on fine time scales require the use of special t...
Hydrometeorological and radio propagation applications can benefit from the capability to model the...