A Bayesian hierarchical framework with a Gaussian copula and a generalized extreme value (GEV) marginal distribution is proposed for the description of spatial dependencies in data. This spatial copula model was applied to extreme summer temperatures over the Extremadura Region, in the southwest of Spain, during the period 1980–2015, and compared with the spatial noncopula model. The Bayesian hierarchical model was implemented with a Monte Carlo Markov Chain (MCMC) method that allows the distribution of the model’s parameters to be estimated. The results show the GEV distribution’s shape parameter to take constant negative values, the location parameter to be altitude dependent, and the scale parameter values to be concentrated around the s...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
This thesis is primarily concerned with determining effective and efficient methods to model spatial...
The generalized extreme value (GEV) distribution is a popular model for analyzing and forecasting ex...
International audienceHazard assessment at a regional scale may be performed thanks to a spatial mod...
Se ha realizado un estudio estadístico de la tendencia temporal de las temperaturas extremas en la r...
The goal of this work is to characterize the extreme precipitation simulated by a regional climate m...
We propose a new statistical model that captures the conditional dependence among extreme events in ...
Abstract—We propose a new statistical model that captures the conditional dependence among extreme e...
We propose a hierarchical modeling approach for explaining a collection of point-referenced extreme ...
A three-stage Bayesian spatial model is fitted to temperature extremes covering Tasmania. In the fir...
Abstract: During the last decades, copulas have been increasingly used to model the dependence acros...
Research on extreme events modeling has grown in prominence due to the destructive influence and inc...
Abstract. The areal modeling of the extremes of a natural process such as rainfall or temperature is...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
© 2016 Dr. Indriati Njoto BisonoQuantifying changes and the associated uncertainties is critical to ...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
This thesis is primarily concerned with determining effective and efficient methods to model spatial...
The generalized extreme value (GEV) distribution is a popular model for analyzing and forecasting ex...
International audienceHazard assessment at a regional scale may be performed thanks to a spatial mod...
Se ha realizado un estudio estadístico de la tendencia temporal de las temperaturas extremas en la r...
The goal of this work is to characterize the extreme precipitation simulated by a regional climate m...
We propose a new statistical model that captures the conditional dependence among extreme events in ...
Abstract—We propose a new statistical model that captures the conditional dependence among extreme e...
We propose a hierarchical modeling approach for explaining a collection of point-referenced extreme ...
A three-stage Bayesian spatial model is fitted to temperature extremes covering Tasmania. In the fir...
Abstract: During the last decades, copulas have been increasingly used to model the dependence acros...
Research on extreme events modeling has grown in prominence due to the destructive influence and inc...
Abstract. The areal modeling of the extremes of a natural process such as rainfall or temperature is...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
© 2016 Dr. Indriati Njoto BisonoQuantifying changes and the associated uncertainties is critical to ...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
This thesis is primarily concerned with determining effective and efficient methods to model spatial...
The generalized extreme value (GEV) distribution is a popular model for analyzing and forecasting ex...