The Generalized Extreme Value (GEV) distribution is often used to describe the frequency of occurrence of extreme rainfall. Modelling the extreme event using the independent Generalized Extreme Value to spatial data fails to account the behaviour of dependency data. However, the wrong statistical assumption by this marginal approach can be adjusted using sandwich estimator. In this paper, we used the conventional method of the marginal fitting of generalized extreme value distribution to the extreme rainfall then corrected the standard error to account for inter-site dependence. We also applied the penalized maximum likelihood to improve the generalized parameter estimations. A case study of annual maximum rainfall from several stations at ...
Not AvailableA random variable can take very large or very small values known as extreme values. In ...
Statistical distributions of annual extreme (AE) and partial duration (PD) for rainfall events are a...
Abstract Extreme rainfall events and the clustering of extreme values provide fundamental informatio...
When the extreme data were obtained from several sites in a region, spatial extreme analysis is alwa...
The purpose of this study is to compare the Generalized Extreme Value (GEV) parameter estimation by ...
AbstractMany probability distributions have been developed to model the extreme rainfall processes. ...
The first part of the research deals with the estimation of extreme rainfalls for locations where r...
Flash floods are known as one of the common natural disasters that cost over billions of Ringgit Mal...
xtreme value analysis is concerned with the modelling of extreme events such as floods and heatwaves...
According to the statistical theory of extremes, the distribution function H(x) of the maximum of a ...
In recent years extreme value distributions have attracted a fair amount of attention in literature ...
The paper deals with the probabilistic estimates of extreme maximum rainfall (Annual basis) in the R...
AbstractIt is well recognized that the generalized extreme value (GEV) distribution is widely used f...
Extreme rainfall is one of the most devastating natural events. The frequency and intensity of these...
We modelled the mean annual rainfall for data recorded in Zimbabwe from 1901 to 2009. Extreme value ...
Not AvailableA random variable can take very large or very small values known as extreme values. In ...
Statistical distributions of annual extreme (AE) and partial duration (PD) for rainfall events are a...
Abstract Extreme rainfall events and the clustering of extreme values provide fundamental informatio...
When the extreme data were obtained from several sites in a region, spatial extreme analysis is alwa...
The purpose of this study is to compare the Generalized Extreme Value (GEV) parameter estimation by ...
AbstractMany probability distributions have been developed to model the extreme rainfall processes. ...
The first part of the research deals with the estimation of extreme rainfalls for locations where r...
Flash floods are known as one of the common natural disasters that cost over billions of Ringgit Mal...
xtreme value analysis is concerned with the modelling of extreme events such as floods and heatwaves...
According to the statistical theory of extremes, the distribution function H(x) of the maximum of a ...
In recent years extreme value distributions have attracted a fair amount of attention in literature ...
The paper deals with the probabilistic estimates of extreme maximum rainfall (Annual basis) in the R...
AbstractIt is well recognized that the generalized extreme value (GEV) distribution is widely used f...
Extreme rainfall is one of the most devastating natural events. The frequency and intensity of these...
We modelled the mean annual rainfall for data recorded in Zimbabwe from 1901 to 2009. Extreme value ...
Not AvailableA random variable can take very large or very small values known as extreme values. In ...
Statistical distributions of annual extreme (AE) and partial duration (PD) for rainfall events are a...
Abstract Extreme rainfall events and the clustering of extreme values provide fundamental informatio...