Bayesískt stigskipt líkan fyrir daglegan meðalhita

In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivariate normal distribution is selected as the data distribution due to its flexibility and theoretical basis. The linear fit is assumed to be governed by a seasonal effect parameter vector, a linear tre...

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Bibliographic Details
Main Author: Snæbjörn Helgi Emilsson 1984-
Other Authors: Háskóli Íslands
Format: Thesis
Language:English
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/1946/12062
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author Snæbjörn Helgi Emilsson 1984-
author2 Háskóli Íslands
author_facet Snæbjörn Helgi Emilsson 1984-
author_sort Snæbjörn Helgi Emilsson 1984-
collection Skemman (Iceland)
description In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivariate normal distribution is selected as the data distribution due to its flexibility and theoretical basis. The linear fit is assumed to be governed by a seasonal effect parameter vector, a linear trend parameter, a long term fluctuation parameter vector and a model constant. The seasonal effect and fluctuations are modeled as independent Gaussian processes which are governed by Gaussian Markov random fields. The covariance matrix of the multivariate normal distribution describes temporal correlation and a seasonally changing variance of the data. A periodic autoregressive (PAR) process is used to model the temporal correlation and regression is used to estimate the parameters. An iterative process is used to update the regression parameters and the Bayesian parameters, since they are dependent on each other. This model allows for future predictions, but is limited to predicting one year ahead. A program based on the model was developed in the R programming language. The program uses the Gibbs sampler, a Markov chain Monte Carlo algorithm, to estimate the parameters of the model by sampling from their conditional distributions. Using the R program the model is applied to observed data from four locations in Iceland over the years 1949 to 2010. These locations are Reykjavík, Akureyri, Dalatangi and Stórhöfði. Based on the model the estimated increase in average temperature over the period is from 0.05 to 0.46°C, depending on location. A prediction was made for the year 2011, which was not a part of the training set. Of the actual temperature values of 2011, only 2.5 to 4.7% of the observations were outside the 95% posterior prediction interval.
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spelling ftskemman:oai:skemman.is:1946/12062 2025-01-16T18:40:26+00:00 Bayesískt stigskipt líkan fyrir daglegan meðalhita A Bayesian Hierarchical Model for Daily Average Temperature Snæbjörn Helgi Emilsson 1984- Háskóli Íslands 2012-05 application/pdf http://hdl.handle.net/1946/12062 en eng http://hdl.handle.net/1946/12062 Iðnaðarverkfræði Líkanagerð Hitastig Bayesian statistical decision theory Thesis Master's 2012 ftskemman 2022-12-11T06:59:13Z In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivariate normal distribution is selected as the data distribution due to its flexibility and theoretical basis. The linear fit is assumed to be governed by a seasonal effect parameter vector, a linear trend parameter, a long term fluctuation parameter vector and a model constant. The seasonal effect and fluctuations are modeled as independent Gaussian processes which are governed by Gaussian Markov random fields. The covariance matrix of the multivariate normal distribution describes temporal correlation and a seasonally changing variance of the data. A periodic autoregressive (PAR) process is used to model the temporal correlation and regression is used to estimate the parameters. An iterative process is used to update the regression parameters and the Bayesian parameters, since they are dependent on each other. This model allows for future predictions, but is limited to predicting one year ahead. A program based on the model was developed in the R programming language. The program uses the Gibbs sampler, a Markov chain Monte Carlo algorithm, to estimate the parameters of the model by sampling from their conditional distributions. Using the R program the model is applied to observed data from four locations in Iceland over the years 1949 to 2010. These locations are Reykjavík, Akureyri, Dalatangi and Stórhöfði. Based on the model the estimated increase in average temperature over the period is from 0.05 to 0.46°C, depending on location. A prediction was made for the year 2011, which was not a part of the training set. Of the actual temperature values of 2011, only 2.5 to 4.7% of the observations were outside the 95% posterior prediction interval. Thesis Akureyri Akureyri Akureyri Iceland Reykjavík Reykjavík Skemman (Iceland) Reykjavík Akureyri Stórhöfði ENVELOPE(-20.288,-20.288,63.399,63.399) Dalatangi ENVELOPE(-13.572,-13.572,65.270,65.270)
spellingShingle Iðnaðarverkfræði
Líkanagerð
Hitastig
Bayesian statistical decision theory
Snæbjörn Helgi Emilsson 1984-
Bayesískt stigskipt líkan fyrir daglegan meðalhita
title Bayesískt stigskipt líkan fyrir daglegan meðalhita
title_full Bayesískt stigskipt líkan fyrir daglegan meðalhita
title_fullStr Bayesískt stigskipt líkan fyrir daglegan meðalhita
title_full_unstemmed Bayesískt stigskipt líkan fyrir daglegan meðalhita
title_short Bayesískt stigskipt líkan fyrir daglegan meðalhita
title_sort bayesískt stigskipt líkan fyrir daglegan meðalhita
topic Iðnaðarverkfræði
Líkanagerð
Hitastig
Bayesian statistical decision theory
topic_facet Iðnaðarverkfræði
Líkanagerð
Hitastig
Bayesian statistical decision theory
url http://hdl.handle.net/1946/12062