Title: Climatic Extremes and Rare Events: Statistics and Modelling
1Climatic Extremes and Rare Events Statistics and
Modelling
- Andreas Hense, Meteorologisches Institut
- Universität Bonn
2Overview
- Definition
- References/Literature/Ongoing work
- Precipitation data
- Theory GEV/GPD
- Comparison between observations and simulation
- Conclusion
3Definition acc. to IPCC TAR WGI
- Rare events occurences of weather or climate
states of high/low quantiles of the underlying
probability distribution e.g. less than 10 / 1
higher then 90 / 99 - weather state temperature, precipitation, wind
- timescale O(1day) or less
- univariate one point, one variable
- multivariate field of one variable
- multivariate one point several variables
4Definition acc. to IPCC TAR WGI
- Climate states aggregated state variables
- time scale O(1m) and larger
- heat waves, cold spells
- stormy seasons
- droughts and floods (2003 and 2002)
5Definition acc. To IPCC TAR WGI
- Extreme events depend
- costs or losses
- see Extreme weather sourcebook by Pielke and
Klein (http//sciencepolicy.colorado.edu/sourceboo
k) - personal perception
6References/Literature/Ongoing Workwithout
claiming completeness
- BAMS 2000, Vol. 81, p.413 ff
- MICE Project funded by EU Commission (J.
Palutikof, CRU) http//www.cru.uea.ac.uk/cru/proje
cts/mice/html/extremes.html - NCAR Weather and Climate Impact Assessment
Science Initiative http//www.esig.ucar.edu/extrem
evalues/extreme.html - KNMI Buishand Precipitation and hydrology
- EVIM Matlab package by Faruk Selcuk, Bilkent
University Ankara, Financial Mathematics
7Precipitation data for illustration
- Daily sums of precipitation in Europe
- 74 Stations 1903-1994
- A-GCM simulations ECHAM4 - T42
- GISST forced 40-60,0-60E daily sums
- annual mean precipitation ECHAM3 and HadCM2
ensembles of GHG szenario simulations
8Theory for rare events
- Frechet,Fisher,Tippet generalized extreme value
(GEV) distribution summarizes Gumbel, Frechet and
Weibull,provides information on maximum or
minimum only - Peak-over-threshold generalized Pareto
distribution GPD - Rate of occurence of exceedance Poisson process
- last two provide informations about the tail of
the distribution of weather or climate state
variables
9Generalized Pareto Distribution
101/q-return value
u 20 mm/day for the observations 10
mm/day for simulations
11Maximum likelihood estimation
12Comparing observations with simulations
- Scale difference between point values and GCM
grid scale variables - two standard approaches
- statistical downscaling, MOS loss of variance
through regression - dynamical downscaling using a RCM
- upscaling of observations
- fit e.g. q-return values with low order
polynomials in latitude,longitude,height
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15Comparing observations with simulations
- ECHAM4-T42 simulates a 20 year return value of
daily precipitation similar to the 10 year return
values of observations - 10 year return values in ECHAM4-T42 are 20
smaller
16Uncertainty
- Large confidence intervals for estimated
parameters (shape, return values) - for models reduction through ensemble simulations
- model error estimation through multimodel
analysis - necessary for analysis of changes
17Uncertainty of annual mean precipitation changes
18Conclusion
- Generalized Pareto distribution approach appears
fruitful for model as well as observation
analysis - Systematic differences in the tail distributions
of precipitation between model and observations - despite upscaling (projection on large scale
structures in observations and simulations)
result of coarse model scales? - requires an analysis of the spatial covariance
structure of the observations - Ensemble simulations allow for an adjustment
- Multivariate methods are necessary