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Indices versus Data. Indices are information derived from data Proxy for data More readily released than data Indices generally not of economic value – only research value and for applications More on this later Are not reproducible without the data A key component of science.
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Indices versus Data • Indices are information derived from data • Proxy for data • More readily released than data • Indices generally not of economic value – only research value and for applications • More on this later • Are not reproducible without the data • A key component of science
NO NO What types of extremes? • Trends in extreme events characterised by the size of their societal or economic impacts • Trends in “very rare” extreme events analysed by the parameters of extreme value distributions • Trends in observational series of phenomena with a daily time scale and typical return period < 1 year(as indicators of extremes) YES
Motivation for choice of “extremes” • The detection probability of trends depends on the return period of the extreme event and the length of the observational series • For extremes in daily series with typical length ~50 yrs, the optimal return period is 10-30 days rather than 10-30 years
Approach • Focus on counts of days crossing a threshold; either absolute/fixed thresholds or percentile/variable thresholds relative to local climate • Standardisation enables comparisons between results obtained in different countries, and even different parts of the world
Expert Team on Climate Change Detection and Indices (ETCCDI) started in 1999 jointly sponsored by CCl, CLIVAR and JCOMM
the ETCCDI developed an internationally coordinated set of 27 climate indices focus on counts of days crossing a threshold; either absolute/fixed thresholds or percentile/variable thresholds relative to local climate used for both observations and models, globally as well as regionally can be coupled with • simple trend analysis techniques • standard detection and attribution methods complements the analysis of more rare extremes using EVT
Klein Tank, Zwiers and Zhang, 2009, WCDMP-No. 72,WMO-TD No. 1500, 56pp.
Example: Russian heat wave, July 2010 In-situ NOAA
Example: Russian heat wave, July 2010 MSU UAH In-situ NOAA ERA-Interim ECMWF • Courtesy: John Christy (top), Adrian Simmons (bottom)
Example: Russian heat wave, July 2010 In-situ NOAA ETCCDI indices add relevant information
Example: Russian heat wave, July 2010 31 days withT-max > 25°C against 9.5 days in a normal July
Example: Russian heat wave, July 2010 16 nights with T-min > 20°C against 0.5 night in a normal July
Indices example upper 10-ptile 1961-1990 the year 1996 lower 10-ptile 1961-1990
“cold nights” Indices example upper 10-ptile 1961-1990 the year 1996 lower 10-ptile 1961-1990
“cold nights” Indices example “warm nights” upper 10-ptile 1961-1990 the year 1996 lower 10-ptile 1961-1990
Indices example De Bilt, the Netherlands
Changes in heavy falls 1) Identify heavy falls using a site specific threshold = 95th percentile at wet days in the 1961-90 period
Changes in heavy falls 1) Identify heavy falls using a site specific threshold = 95th percentile at wet days in the 1961-90 period 2) Determine fraction of total precipitation in each year that is due to these days
Changes in heavy falls 1) Identify heavy falls using a site specific threshold = 95th percentile at wet days in the 1961-90 period 2) Determine fraction of total precipitation in each year that is due to these days 3) Trend analysis in series of fractions
Changes in heavy falls Alexander et al.,2006; in IPCC-AR4