In this thesis, spatio-temporal temperature trends are estimated based on monthly average temperatures from 503 observation locations in the southern half of Norway. The time period studied is 1960 to 2016. A latent Gaussian model is proposed, where spatial Gaussian random fields and temporal polynomials of second degree are used to model the temperature trends. A Bayesian approach is taken for the inference, and the integrated nested Laplace approximations methodology is used to carry out the inference. The model is easy to interpret, has interpretable results, is able to predict missing observations, and successfully estimates temperature trends that correspond to other research results. Five sets of different prior distributions are used...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Strong historical and predicted future warming over high-latitudes prompt significant effects on agr...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
Classical assessments of trends in gridded temperature data perform independent evaluations across t...
In general, reliable trend estimates for temperature data may be challenging to obtain, mainly due t...
In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivar...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We propose a model to describe the mean function as well as the spatio-temporal covariance structur...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Global mean surface air temperature is the most used measure of the climate system. Nowadays, due to...
Recently the topic of global warming has become very popular. The literature has concentrated its at...
Detecting temporal and spatial trends of annual and seasonal land surface temperature (LST) can cont...
Classical assessments of temperature trends are based on the analysis of a small number of time seri...
This paper provides a solution to the problem of estimating the mean value of near-land-surface temp...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Strong historical and predicted future warming over high-latitudes prompt significant effects on agr...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
Classical assessments of trends in gridded temperature data perform independent evaluations across t...
In general, reliable trend estimates for temperature data may be challenging to obtain, mainly due t...
In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivar...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We propose a model to describe the mean function as well as the spatio-temporal covariance structur...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Global mean surface air temperature is the most used measure of the climate system. Nowadays, due to...
Recently the topic of global warming has become very popular. The literature has concentrated its at...
Detecting temporal and spatial trends of annual and seasonal land surface temperature (LST) can cont...
Classical assessments of temperature trends are based on the analysis of a small number of time seri...
This paper provides a solution to the problem of estimating the mean value of near-land-surface temp...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Strong historical and predicted future warming over high-latitudes prompt significant effects on agr...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...