The STARDEX project - background, challenges and successes
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The STARDEX project - background, challenges and successes
A project within the EC 5th Framework Programme
1 February 2002 to 31 July 2005
http://www.cru.uea.ac.uk/projects/stardex/http://www.cru.uea.ac.uk/projects/mps/
Clare GoodessClimatic Research Unit, UEA, Norwich, UK
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The STARDEX consortium
Organisation name Key personsUniversity of East Anglia, UK Clare Goodess
Malcolm HaylockGavin CawleyPhil Jones
King’s College London, UK Rob WilbyColin Harpham
Fundación para la Investigación del Clima, Spain Jaime RibalayguaRafael BorénManuel Blanco
University of Bern, Switzerland Evi SchuepbachCentre National de la Recherche Scientifique, France Guy Plaut
Eric SimonnetServizio Meteorologico Regional, ARPA-Emilia Romagna,Italy
Carlo CacciamaniValentina PavanRodica Tomozeiu
Atmospheric Dynamics Group, University of Bologna, Italy Ennio TosiDanish Meteorological Institute, Denmark Torben SchmithEidgenössische Technische Hochschule, Switzerland Christoph Frei
Juerg SchmidliFachhochschule Stuttgart – Hochschule für Technik,Germany
Hans Caspary
Institut für Wasserbau, Germany András BárdossyYeshewatesfa Hundecha
University of Thessaloniki, Greece Panagiotis MaherasChristina Anagnostopoulou
http://www.cru.uea.ac.uk/projects/stardex/
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STARDEX general objectives
• To rigorously & systematically inter-compare & evaluate statistical and dynamical downscaling methods for the reconstruction of observed extremes & the construction of scenarios of extremes for selected European regions & Europe as a whole
• To identify the more robust downscaling techniques & to apply them to provide reliable & plausible future scenarios of temperature & precipitation-based extremes
http://www.cru.uea.ac.uk/projects/stardex/
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Consistent approach:
e.g., indices of extremes
http://www.cru.uea.ac.uk/projects/stardex/
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STARDEX Diagnostic extremes indices software
• Fortran subroutine:– 19 temperature indices– 35 precipitation indices– least squares linear regression to fit linear trends & Kendall-
Tau significance test
• Program that uses subroutine to process standard format station data
• User information document
• All available from public web site
http://www.cru.uea.ac.uk/projects/stardex/
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STARDEX core indices
• 90th percentile of rainday amounts (mm/day)
• greatest 5-day total rainfall
• simple daily intensity (rain per rainday)
• max no. consecutive dry days
• % of total rainfall from events > long-term P90
• no. events > long-term 90th percentile of raindays
• Tmax 90th percentile
• Tmin 10th percentile
• number of frost days Tmin < 0 degC
• heat wave duration
http://www.cru.uea.ac.uk/projects/stardex/
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1958-2000 trend in frost days
Days per yearBlue is increasing
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1958-2000 trend in summer rainevents > long-term 90th percentile
Scale is days/yearBlue is increasing
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Local scale trends in extreme heavy precipitation indices
+variablevariablevariableFrench Alps
++++++Switzerland
--Greece
++--N. Italy
+--+++Germany
--++England
AutumnSummerSpringWinterRegion
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Investigation of causes, focusing onpotential predictor variables
e.g., SLP, 500 hPa GP, RH, SST, NAO/blocking/cyclone indices, regional circulation indices
http://www.cru.uea.ac.uk/projects/stardex/
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Winter R90N relationships with MSLP, Malcolm Haylock
-3
-2
-1
0
1
2
3
4
1955 1965 1975 1985 1995
NAO -R90N PC2
http://www.cru.uea.ac.uk/projects/stardex/
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MSLP Canonical Pattern 1. Variance = 44.4%.
R90N Canonical Pattern 1. Variance = 11.3%.
Winter R90N relationships with MSLP, Malcolm Haylock
http://www.cru.uea.ac.uk/projects/stardex/
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Analysis of GCM/RCM output & their ability to simulate extremes and predictor variables
(and their relationships)
http://www.cru.uea.ac.uk/projects/stardex/
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HIRHAM
HadRM3
Mean 90% quantile
Christoph Frei, ETH
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Inter-comparison of improved downscaling methods with emphasis on extremes
http://www.cru.uea.ac.uk/projects/stardex/
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Radial Basis Function: Colin Harpham/Rob Wilby
0
5
10
15
20
1978 1983 1988 1993
mm
/day
NW England, 90th percentile for DJFValidation period: 1979-1993Red: observationsBlue: predictors selected using stepwise regression, r=0.34Black: predictors selected using compositing, r=0.24
http://www.cru.uea.ac.uk/projects/stardex/
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At the end of the project (July 2005) we will have:
• Recommendations on the most robust downscaling methods for scenarios of extremes
• Downscaled scenarios of extremes for the end of the 21st century
• Summary of changes in extremes and comparison with past changes
• Assessment of uncertainties associated with the scenarios
http://www.cru.uea.ac.uk/projects/stardex/
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Dissemination & communication
• internal web site (with MICE and PRUDENCE)• public web site• scientific reports and papers• scientific conferences• information sheets, e.g., 2002 floods, 2003 heat wave• powerpoint presentations• external experts• within-country contacts