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Role of soil moisture for climate extremes and trends in Europe Eric Jäger and Sonia Seneviratne CECILIA final meeting, 25.November 2009
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Motivation Several major extreme events over Europe in recent years (e.g. heat wave 2003, Schär et al. (2004), Nature) -10 -5 0 +5 +10K R. Stöckli 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Motivation Several major extreme events over Europe in recent years (e.g. heat wave 2003, Schär et al. (2004), Nature) Likely to become more frequent in future (IPCC 2007; e.g. Meehl and Tebaldi (2004), Science; Christensen and Christensen (2003), Nature) -10 -5 0 +5 +10K IPCC 2007 R. Stöckli 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Motivation Several major extreme events over Europe in recent years (e.g. heat wave 2003, Schär et al. (2004), Nature) Likely to become more frequent in future (IPCC 2007; e.g. Meehl and Tebaldi (2004), Science; Christensen and Christensen (2003), Nature) Land-atmosphere interactions are a substantial contribution (Seneviratne et al. (2006), Nature) -10 -5 0 +5 +10K IPCC 2007 R. Stöckli 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Model experiments Regional climate model CLM, 50km, driven by ECMWF re- analysis and operational analysis (1958-2006) (see Jaeger et al. [2008; 2009] for a validation of the model) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Model experiments Interactive SM: CTL: control simulation Prescribed SM: SSV: lowpass filtered SM from CTL (cutoff ~10d) ISV: lowpass filtered SM from CTL (cutoff ~100d) IAV: SM climatology from CTL PWP: SM const. at plant wilting point FCAP: SM const. at field capacity Regional climate model CLM, 50km, driven by ECMWF re- analysis and operational analysis (1958-2006) (see Jaeger et al. [2008; 2009] for a validation of the model) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Model experiments Interactive SM: CTL: control simulation Prescribed SM: SSV: lowpass filtered SM from CTL (cutoff ~10d) ISV: lowpass filtered SM from CTL (cutoff ~100d) IAV: SM climatology from CTL PWP: SM const. at plant wilting point FCAP: SM const. at field capacity Regional climate model CLM, 50km, driven by ECMWF re- analysis and operational analysis (1958-2006) (see Jaeger et al. [2008; 2009] for a validation of the model) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS Jaeger and Seneviratne., Clim. Dynam. (submitted)
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Assessment of Extremes Probability density functions of T max Extreme indices (as defined in CECILIA) Extreme Value Theory (block maxima & peak over threshold, both stationary and non-stationary) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Assessment of Extremes Probability density functions of T max Extreme indices (as defined in CECILIA) Extreme Value Theory (block maxima & peak over threshold, both stationary and non-stationary) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: PDFs of T max 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS Eastern Europe
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Extremes: PDFs of T max Soil moisture effects high T max values stronger than low ones 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS Eastern Europe
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Extremes: PDFs of T max Soil moisture has a dampening effect on temperature 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS Eastern Europe
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Extremes: HWDI HWDI = heat wave duration index: ‘mean number of consecutive days (at least two) with values above the long-term 90 th -percentile’ 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI T time 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI T time Long-term 90 th -percentile 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI T time potential heat waves Long-term 90 th -percentile 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI T time 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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T 1. ΔTΔT CTL Extremes: HWDI time 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Δ T=0 Δ persistence T 2. CTL Extremes: HWDI time 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI SSV-CTL ISV-CTL IAV-CTL PWP-CTL FCAP-CTL hwdi +9 -9 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI SSV-CTL ISV-CTL IAV-CTL PWP-CTL FCAP-CTL hwdi +9 -9 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS Due to changes in the PDF of T max or due to changes in persistence?
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T Extremes: HWDI time ΔTΔT CT L EXP 10% 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI SSV-CTL ISV-CTL IAV-CTL PWP-CTL FCAP-CTL hwdi* hwdi +9 -9 +2.7 -2.7 Lorenz et al., GRL (submitted) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Extremes: HWDI SSV-CTL ISV-CTL IAV-CTL PWP-CTL FCAP-CTL hwdi* hwdi +9 -9 +2.7 -2.7 Continuous reduction in HWDI, likely due to reduction in persistence associated with a loss of SM memory Lorenz et al., GRL (submitted) 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Trends in T max T max 1981-2006: CTL 1959-1980:CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Trends in T max : mechanisms? T max 1981-2006: CTL 1959-1980:CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS global-dimming global-brightening due to aerosol trends
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Trends in T max : mechanisms? T max 1981-2006: CTL 1959-1980:CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS global-dimming global-brightening due to aerosol trends BUT: in CLM and ECMWF model aerosols are constant only an indirect effect of aerosols via data assimilation
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Trends in T max : mechanisms? T max clouds SM 1981-2006: CTL 1959-1980:CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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no trend Trends in T max : link to SM T max clouds SM 1981-2006: IAV 1981-2006: CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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no trend Trends in T max : link to SM Aerosols are kept const. in CLM, hence (mostly) only cloud trends are the cause for T max trends, whereas SM act as an amplifier T max clouds SM 1981-2006: IAV 1981-2006: CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Trends in T max (extremes) extremes mean 1981-2006: IAV 1981-2006: CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Trends in T max (extremes) extremes mean Stronger than those in mean 1981-2006: IAV 1981-2006: CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Trends in T max (extremes) extremes mean Stronger influence of SM 1981-2006: IAV 1981-2006: CTL 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Conclusions SM asymmetrically effects the PDFs of Tmax, and dampens temperature variability 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Conclusions SM asymmetrically effects the PDFs of Tmax, and dampens temperature variability Reduced SM memory causes a reduction in persistence in T max extremes hwdi* 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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Conclusions 1959-1980 1981-2006 SM asymmetrically effects the PDFs of Tmax, and dampens temperature variability Reduced SM memory causes a reduction in persistence in T max extremes Trends in T max are likely due to trends in clouds, whereas SM acts as an amplifier hwdi* 1. BACKGROUND 2. RESULTS 3. CONCLUSIONS
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