Stochastic rainfall models are widely used in hydrological studies because they provide a framework not only for deriving information about the characteristics of rainfall but also for generating precipitation inputs to simulation models whenever data are not available. A stochastic point process model based on a class of doubly stochastic Poisson processes is proposed to analyse fine-scale point rainfall time series. In this model, rain cells arrive according to a doubly stochastic Poisson process whose arrival rate is determined by a finite-state Markov chain. Each rain cell has a random lifetime. During the lifetime of each rain cell, instantaneous random depths of rainfall bursts (pulses) occur according to a Poisson process. The covari...
In a recent development in the literature, a new temporal rainfall model, based on the Bartlett-Lewi...
Stochastic point processes for rainfall are known to be able to preserve the temporal variability of...
To simulate the impacts of within-storm rainfall variabilities on fast hydrological processes, long ...
Point process theory lends itself to the modelling of rainfall data and has been widely used for thi...
Stochastic point process models have been widely used to model rainfall time series. Doubly stochast...
There are a number of stochastic point process models that can be used to generate rainfall data at ...
This paper explores the use of a class of stochastic point process models, based on doubly stochasti...
We develop a doubly stochastic point process model with exponentially decaying pulses to describe th...
We consider stochastic point process models, based on doubly stochastic Poisson process, to analyse ...
We develop a doubly stochastic point process model with exponentially decaying pulses to describe th...
We consider stochastic point process models, based on doubly stochastic Poisson process, to analyse ...
A cluster point process model is considered for the analysis of fine-scale rainfall time series. The...
Rainfall variability within a storm is of major importance for fast hydrological processes, e.g. sur...
In a recent development in the literature, a new temporal rainfall model, based on the Bartlett-Lewi...
A point process model based on a class of Cox processes is developed to analyse precipitation data a...
In a recent development in the literature, a new temporal rainfall model, based on the Bartlett-Lewi...
Stochastic point processes for rainfall are known to be able to preserve the temporal variability of...
To simulate the impacts of within-storm rainfall variabilities on fast hydrological processes, long ...
Point process theory lends itself to the modelling of rainfall data and has been widely used for thi...
Stochastic point process models have been widely used to model rainfall time series. Doubly stochast...
There are a number of stochastic point process models that can be used to generate rainfall data at ...
This paper explores the use of a class of stochastic point process models, based on doubly stochasti...
We develop a doubly stochastic point process model with exponentially decaying pulses to describe th...
We consider stochastic point process models, based on doubly stochastic Poisson process, to analyse ...
We develop a doubly stochastic point process model with exponentially decaying pulses to describe th...
We consider stochastic point process models, based on doubly stochastic Poisson process, to analyse ...
A cluster point process model is considered for the analysis of fine-scale rainfall time series. The...
Rainfall variability within a storm is of major importance for fast hydrological processes, e.g. sur...
In a recent development in the literature, a new temporal rainfall model, based on the Bartlett-Lewi...
A point process model based on a class of Cox processes is developed to analyse precipitation data a...
In a recent development in the literature, a new temporal rainfall model, based on the Bartlett-Lewi...
Stochastic point processes for rainfall are known to be able to preserve the temporal variability of...
To simulate the impacts of within-storm rainfall variabilities on fast hydrological processes, long ...