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The STARDEX project background, challenges and successes

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Title: The STARDEX project background, challenges and successes


1
The STARDEX project - background, challenges
and successes
Clare Goodess Climatic Research Unit, UEA,
Norwich, UK
  • 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/

2
The STARDEX consortium
http//www.cru.uea.ac.uk/projects/stardex/
3
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/
4
Consistent approach
e.g., indices of extremes
http//www.cru.uea.ac.uk/projects/stardex/
5
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/
6
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 gt long-term P90
  • no. events gt long-term 90th percentile of
    raindays
  • Tmax 90th percentile
  • Tmin 10th percentile
  • number of frost days Tmin lt 0 degC
  • heat wave duration

http//www.cru.uea.ac.uk/projects/stardex/
7
1958-2000 trend in frost days
Days per year Blue is increasing
Malcolm Haylock, UEA
8
1958-2000 trend in summer rain events gt long-term
90th percentile
Scale is days/year Blue is increasing
Malcolm Haylock, UEA
9
Local scale trends in extreme heavy precipitation
indices
Andras Bardossy, USTUTT-IWS
10
Investigation of causes, focusing on potential
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/
11
Winter R90N relationships with MSLP NAO, Malcolm
Haylock
R 0.64
http//www.cru.uea.ac.uk/projects/stardex/
12
Winter R90N relationships with MSLP, Malcolm
Haylock
MSLP Canonical Pattern 1. Variance 44.4.
R90N Canonical Pattern 1. Variance 11.3.
http//www.cru.uea.ac.uk/projects/stardex/
13
Analysis of GCM/RCM output their ability to
simulate extremes and predictor variables and
their relationships
http//www.cru.uea.ac.uk/projects/stardex/
14
Annual Cycle
RCMs HadAM3H control (1961-1990).
ERA15-driven Domain 2.25-17.25 E, 42.25-48.75
N, All Alps
Christoph Frei, ETH
15
SON Wet-day 90 Quantile (mm/day)
RCMs HadAM3H control (1961-1990).
Christoph Frei, ETH
16
Approach
  • Use high-resolution observations to evaluate
    model at its grid scale
  • How well can a GCM represent regional climate
    anomalies in response to changes in large-scale
    forcings? Use interannual variations as a
    surrogate forcing.
  • Use Reanalysis as a quasi-perfect surrogate GCM.
  • Distinguish between resolved (GCM grid-point) and
    unresolved (single station) scales.

Christoph Frei, ETH
17
Study Regions
Europe (FIC) 481 stations in total
England (UEA) P 13-27 per gp T 8-30 per gp
German Rhine (USTUTT) P 500 per gp T 150 per
gp
Alps (ETH) P 500 per gp
Greece (AUTH) P 5-10 per gp T 5-10 per gp
Emilia-Rom. (ARPA) P 10-20 per gp T 5-10 per gp
Christoph Frei, ETH
18
Example German Rhine Basin
Precipitation Indices
DJF
JJA
GCM scale Station scale
Christoph Frei, ETH
19
Inter-comparison of improved downscaling methods
with emphasis on extremes
http//www.cru.uea.ac.uk/projects/stardex/
20
  • Downscaling methods
  • canonical correlation analysis
  • neural networks
  • conditional resampling
  • regression
  • conditional weather generator
  • potential precipitation circulation
    index/critical circulation patterns

Study regions
21
Predictor selection methods
  • Correlation
  • Stepwise multiple regression
  • PCA/CCA
  • Compositing
  • Neural networks
  • Genetic algorithm
  • Weather typing
  • Trend analysis

http//www.cru.uea.ac.uk/projects/stardex/
22
Downscaling of Tmax90p
Model is constructed on the period
1958-1978/1994-2000 and validated on 1979-1993
PREDICTAND Time series of 90th percentile of
maximum temperature (Tmax90p) 30 stations from
Emilia-Romagna (1958-2000) that were clusterised
in 3 regions (Fig.2) PREDICTORS Exp 1
Seasonal mean (DJF) of first 4 PCs of Z500
over the area 90W-60E, 20N-90N ) Exp 2
Seasonal mean (DJF) of WA, EA, EB, SCA, over the
area 90W-60E, 20N-90N
Clusters for Tmax90p (DJF)
Tomozeiu et al., ARPA-SMR
23
Interannual variability of downscaled, Observed
and NCEP Tmax90p (DJF), 1979-1993
Tomozeiu et al., ARPA-SMR
24
Downscaling of 692R90N 2 exp.
Downscaling of 692R90N
Model is constructed on the period
1958-1978/1994-2000 and validated on 1979-1993
PREDICTAND Time series of observed no.of events
greater than 90th percentile of raindays
(692R90N)44 stations from Emilia-Romagna
(1958-2000) that were clusterised in 5 regions
(Fig.1) PREDICTORS Seasonal mean (DJF) of
first 4 PCs of Z500 that covers the area
90W-60E, 20N-90N (NCEP reanalysis,2.5x2.5)
Fig.1 Clusters for 692R90N (DJF)
Tomozeiu et al., ARPA-SMR
25
Skill of the statistical downscaling model
1979-1993 expressed as correlation coefficient
between the observed and estimated 692R90N
(bold-5significance)
Tomozeiu et al., ARPA-SMR
26
Probability of precipitation at station 75103
conditioned to wet and dry CPs
Andras Bardossy, USTUTT-IWS
27
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/
28
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

http//www.cru.uea.ac.uk/projects/stardex/
29
  • http//www.cru.uea.ac.uk/projects/stardex/
  • http//www.cru.uea.ac.uk/projects/mps/

c.goodess_at_uea.ac.uk
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