O. Haug, T. Thorarinsdottir, S. Sørbye, C. Franzke
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Spatial trend analysis of gridded temperature data at varying spatial scales
Abstract. 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
regions where the null hypothesis of no trend is rejected, this is not the
case for all subregions.