Title of article :
Extreme value and cluster analysis of European daily temperature series
Author/Authors :
Manuel G. Scotto، نويسنده , , Susana M. Barbosa&Andrés M. Alonso، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Time series of daily mean temperature obtained from the European Climate Assessment data set is analyzed
with respect to their extremal properties. A time-series clustering approach which combines Bayesian
methodology, extreme value theory and classification techniques is adopted for the analysis of the regional
variability of temperature extremes. The daily mean temperature records are clustered on the basis of their
corresponding predictive distributions for 25-, 50- and 100-year return values. The results of the cluster
analysis showa clear distinction between the highest altitude stations, for which the return values are lowest,
and the remaining stations. Furthermore, a clear distinction is also found between the northernmost stations
in Scandinavia and the stations in central and southern Europe. This spatial structure of the return period
distributions for 25-, 50- and 100-years seems to be consistent with projected changes in the variability
of temperature extremes over Europe pointing to a different behavior in central Europe than in northern
Europe and the Mediterranean area, possibly related to the effect of soil moisture and land-atmosphere
coupling.
Keywords :
return values , daily mean temperature series , cluster analysis , Bayesian inference
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS