Classical assessments of trends in gridded temperature data perform independent evaluations across the grid, thus, ignoring spatial correlations in the trend estimates. In particular, this affects assessments of trend significance as evaluation of the collective significance of individual tests is commonly neglected. In this article we build a space–time hierarchical Bayesian model for temperature anomalies where the trend coefficient is modelled by a latent Gaussian random field. This enables us to calculate simultaneous credible regions for joint significance assessments. In a case study, we assess summer season trends in 65 years of gridded temperature data over Europe. We find that while spatial smoothing generally results in larger reg...
International Geostatistical Congress (10º. 2016. Valencia)The purpose of this work is to present a ...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Detecting temporal and spatial trends of annual and seasonal land surface temperature (LST) can cont...
In general, reliable trend estimates for temperature data may be challenging to obtain, mainly due t...
In this thesis, spatio-temporal temperature trends are estimated based on monthly average temperatur...
Classical assessments of temperature trends are based on the analysis of a small number of time seri...
Temporal persistence in unforced climate variability makes detection of trends in surface temperatur...
Temporal persistence in unforced climate variability makes detection of trends in surface temperatur...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We evaluate three categories of variables for explaining the spatial pattern of warming and cooling ...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We analyze a time series of global temperature anomaly distributions to identify and estimate persis...
Recently the topic of global warming has become very popular. The literature has concentrated its at...
In this thesis, we describe how appropriately modelling the spatio-temporal mean surface can help re...
The purpose of this work is to present a new methodology for identifying geographical regions within...
International Geostatistical Congress (10º. 2016. Valencia)The purpose of this work is to present a ...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Detecting temporal and spatial trends of annual and seasonal land surface temperature (LST) can cont...
In general, reliable trend estimates for temperature data may be challenging to obtain, mainly due t...
In this thesis, spatio-temporal temperature trends are estimated based on monthly average temperatur...
Classical assessments of temperature trends are based on the analysis of a small number of time seri...
Temporal persistence in unforced climate variability makes detection of trends in surface temperatur...
Temporal persistence in unforced climate variability makes detection of trends in surface temperatur...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We evaluate three categories of variables for explaining the spatial pattern of warming and cooling ...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We analyze a time series of global temperature anomaly distributions to identify and estimate persis...
Recently the topic of global warming has become very popular. The literature has concentrated its at...
In this thesis, we describe how appropriately modelling the spatio-temporal mean surface can help re...
The purpose of this work is to present a new methodology for identifying geographical regions within...
International Geostatistical Congress (10º. 2016. Valencia)The purpose of this work is to present a ...
Acknowledging a considerable literature on modeling daily temperature data, we propose a multi-level...
Detecting temporal and spatial trends of annual and seasonal land surface temperature (LST) can cont...