Bayesian prediction of glacial discharge in Antartica using copulas

Glaciers are considered sensors of the Global Warming. The study of their mass balance is essential to understand their future behaviour. One of the components of this mass balance is the loss of water produced by melting, this is known as the glacier discharge. The aim of this work is to analyse th...

Full description

Bibliographic Details
Main Author: Gómez Díaz, Mario
Other Authors: Ausín Olivera, María Concepción, Domínguez Álvarez, María del Carmen, UC3M. Departamento de Estadística
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/10016/26880
id ftunivcarlosmadr:oai:e-archivo.uc3m.es:10016/26880
record_format openpolar
spelling ftunivcarlosmadr:oai:e-archivo.uc3m.es:10016/26880 2024-01-21T10:02:00+01:00 Bayesian prediction of glacial discharge in Antartica using copulas Gómez Díaz, Mario Ausín Olivera, María Concepción Domínguez Álvarez, María del Carmen UC3M. Departamento de Estadística east=135; north=-82.862752; name=Antártida 2017-12-22 application/pdf http://hdl.handle.net/10016/26880 eng eng http://hdl.handle.net/10016/26880 Atribución-NoComercial-SinDerivadas 3.0 España http://creativecommons.org/licenses/by-nc-nd/3.0/es/ open access Estadística bayesiana Análisis multivariante Glaciares Agua Estadística doctoral thesis 2017 ftunivcarlosmadr 2023-12-27T00:17:54Z Glaciers are considered sensors of the Global Warming. The study of their mass balance is essential to understand their future behaviour. One of the components of this mass balance is the loss of water produced by melting, this is known as the glacier discharge. The aim of this work is to analyse the relationship among the glacier discharge and other meteorological variables such as temperature, humidity, solar radiation and precipitation, and to find a model that allow us to forecast future values of the glacier discharge. In Chapter 2, we propose the use of time-varying copula models for analysing the relationship between air temperature and glacier discharge, which is clearly non constant and non-linear through time. A bivariate copula model is defined, where both, the marginal and copula parameters, vary periodically along time; following a seasonal dynamic. Full Bayesian inference is performed such that the marginal and copula parameters are estimated in a one single step, in contrast with the usual two-step approach. Bayesian prediction and model selection are also carried out for the proposed model such that Bayesian credible intervals can be obtained for the conditional glacier discharge given a value of the temperature at any time point. In Chapter 3, as a second model, a vine copula structure is proposed to model the multivariate and nonlinear dependence among the glacier discharge and the other related meteorological variables. The multivariate distribution of these variables is divided in four cases according to the presence or not of positive discharge and/or positive precipitation. Then, each different case is modelled with a vine copula. Seasonal effects in this second model are captured by using different parameters for each season. The conditional probability of zero discharge for given meteorological conditions is obtained from the proposed joint distribution. Moreover, the structure of the vine copula allows us to derive the conditional distribution of the glacier discharge for the given ... Doctoral or Postdoctoral Thesis antartic* Antártida Universidad Carlos III de Madrid: e-Archivo
institution Open Polar
collection Universidad Carlos III de Madrid: e-Archivo
op_collection_id ftunivcarlosmadr
language English
topic Estadística bayesiana
Análisis multivariante
Glaciares
Agua
Estadística
spellingShingle Estadística bayesiana
Análisis multivariante
Glaciares
Agua
Estadística
Gómez Díaz, Mario
Bayesian prediction of glacial discharge in Antartica using copulas
topic_facet Estadística bayesiana
Análisis multivariante
Glaciares
Agua
Estadística
description Glaciers are considered sensors of the Global Warming. The study of their mass balance is essential to understand their future behaviour. One of the components of this mass balance is the loss of water produced by melting, this is known as the glacier discharge. The aim of this work is to analyse the relationship among the glacier discharge and other meteorological variables such as temperature, humidity, solar radiation and precipitation, and to find a model that allow us to forecast future values of the glacier discharge. In Chapter 2, we propose the use of time-varying copula models for analysing the relationship between air temperature and glacier discharge, which is clearly non constant and non-linear through time. A bivariate copula model is defined, where both, the marginal and copula parameters, vary periodically along time; following a seasonal dynamic. Full Bayesian inference is performed such that the marginal and copula parameters are estimated in a one single step, in contrast with the usual two-step approach. Bayesian prediction and model selection are also carried out for the proposed model such that Bayesian credible intervals can be obtained for the conditional glacier discharge given a value of the temperature at any time point. In Chapter 3, as a second model, a vine copula structure is proposed to model the multivariate and nonlinear dependence among the glacier discharge and the other related meteorological variables. The multivariate distribution of these variables is divided in four cases according to the presence or not of positive discharge and/or positive precipitation. Then, each different case is modelled with a vine copula. Seasonal effects in this second model are captured by using different parameters for each season. The conditional probability of zero discharge for given meteorological conditions is obtained from the proposed joint distribution. Moreover, the structure of the vine copula allows us to derive the conditional distribution of the glacier discharge for the given ...
author2 Ausín Olivera, María Concepción
Domínguez Álvarez, María del Carmen
UC3M. Departamento de Estadística
format Doctoral or Postdoctoral Thesis
author Gómez Díaz, Mario
author_facet Gómez Díaz, Mario
author_sort Gómez Díaz, Mario
title Bayesian prediction of glacial discharge in Antartica using copulas
title_short Bayesian prediction of glacial discharge in Antartica using copulas
title_full Bayesian prediction of glacial discharge in Antartica using copulas
title_fullStr Bayesian prediction of glacial discharge in Antartica using copulas
title_full_unstemmed Bayesian prediction of glacial discharge in Antartica using copulas
title_sort bayesian prediction of glacial discharge in antartica using copulas
publishDate 2017
url http://hdl.handle.net/10016/26880
op_coverage east=135; north=-82.862752; name=Antártida
genre antartic*
Antártida
genre_facet antartic*
Antártida
op_relation http://hdl.handle.net/10016/26880
op_rights Atribución-NoComercial-SinDerivadas 3.0 España
http://creativecommons.org/licenses/by-nc-nd/3.0/es/
open access
_version_ 1788692394865065984