We analyze the performance of composite stochastic models of temporal precipitation which can satisfactorily reproduce precipitation properties across a wide range of temporal scales. The rationale is that a combination of stochastic precipitation models which are most appropriate for specific limited temporal scales leads to better overall performance across a wider range of scales than single models alone. We investigate different model combinations. For the coarse (daily) scale these are models based on Alternating renewal processes, Markov chains, and Poisson cluster models, which are then combined with a microcanonical Multiplicative Random Cascade model to disaggregate precipitation to finer (minute) scales. The composite models were ...
Graduation date: 1986Mathematical models of the precipitation process are needed to\ud effectively u...
The Australian SILO Data Drill facility generates continuous daily rainfall data from 1889 to curren...
A stochastic model is developed for the synthesis of daily precipitation using conditioning by wea...
To simulate the impacts of within-storm rainfall variabilities on fast hydrological processes, long ...
Several of the existing rainfall models involve diverse assumptions, a variety of uncertain paramete...
This paper examines the success of various Markov-chain models of daily precipitation series in repr...
Many multi-site stochastic models have been proposed for the generation of daily precipitation, but...
We investigate the ability of the multiplicative random cascade model to accurately simulate tempora...
International audienceAbstract Precipitation is highly variable in space and time; hence, rain gauge...
This paper explores the use of a class of stochastic point process models, based on doubly stochasti...
Stochastic point process models have been widely used to model rainfall time series. Doubly stochast...
Abstract: This article reviews the historical development of statistical weather models, from simple...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
A robust model for disaggregation of daily rainfall data at a point within a large region to any fin...
This paper compares the performance of seven disaggregation models, based on various approaches and/...
Graduation date: 1986Mathematical models of the precipitation process are needed to\ud effectively u...
The Australian SILO Data Drill facility generates continuous daily rainfall data from 1889 to curren...
A stochastic model is developed for the synthesis of daily precipitation using conditioning by wea...
To simulate the impacts of within-storm rainfall variabilities on fast hydrological processes, long ...
Several of the existing rainfall models involve diverse assumptions, a variety of uncertain paramete...
This paper examines the success of various Markov-chain models of daily precipitation series in repr...
Many multi-site stochastic models have been proposed for the generation of daily precipitation, but...
We investigate the ability of the multiplicative random cascade model to accurately simulate tempora...
International audienceAbstract Precipitation is highly variable in space and time; hence, rain gauge...
This paper explores the use of a class of stochastic point process models, based on doubly stochasti...
Stochastic point process models have been widely used to model rainfall time series. Doubly stochast...
Abstract: This article reviews the historical development of statistical weather models, from simple...
High-resolution space-time stochastic models for precipitation are crucial for hydrological applicat...
A robust model for disaggregation of daily rainfall data at a point within a large region to any fin...
This paper compares the performance of seven disaggregation models, based on various approaches and/...
Graduation date: 1986Mathematical models of the precipitation process are needed to\ud effectively u...
The Australian SILO Data Drill facility generates continuous daily rainfall data from 1889 to curren...
A stochastic model is developed for the synthesis of daily precipitation using conditioning by wea...