2015
DOI: 10.5194/hess-19-877-2015
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Global trends in extreme precipitation: climate models versus observations

Abstract: Abstract. Precipitation events are expected to become substantially more intense under global warming, but few global comparisons of observations and climate model simulations are available to constrain predictions of future changes in precipitation extremes. We present a systematic global-scale comparison of changes in historical annualmaximum daily precipitation between station observations (compiled in HadEX2) and the suite of global climate models contributing to the fifth phase of the Coupled Model Inter… Show more

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Cited by 224 publications
(147 citation statements)
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“…Although barely significant (see the limited extent of the stippling), there is general drying in Mexico and Texas, extending into the southwest US, and more positive anomalies in the eastern gulf and Florida. The pattern of yearly anomalies shown here is consistent with the expectations reported in the literature for both CMIP3 and CMIP5 models (see for example Seager et al, 2007Seager et al, , 2014Biasutti et al, 2011;Christensen et al, 2013;Maloney et al, 2014). It can be interpreted as the sum of a weak US-wide summertime drying and the wintertime pattern of increase in rainfall north of 40 • N and decrease in precipitation in the southwest and Texas.…”
Section: Erosivity Calculations Using Historical Model Datasupporting
confidence: 79%
See 1 more Smart Citation
“…Although barely significant (see the limited extent of the stippling), there is general drying in Mexico and Texas, extending into the southwest US, and more positive anomalies in the eastern gulf and Florida. The pattern of yearly anomalies shown here is consistent with the expectations reported in the literature for both CMIP3 and CMIP5 models (see for example Seager et al, 2007Seager et al, , 2014Biasutti et al, 2011;Christensen et al, 2013;Maloney et al, 2014). It can be interpreted as the sum of a weak US-wide summertime drying and the wintertime pattern of increase in rainfall north of 40 • N and decrease in precipitation in the southwest and Texas.…”
Section: Erosivity Calculations Using Historical Model Datasupporting
confidence: 79%
“…An increase in the intensity of rainfall, especially in the frequency of the most extreme events, is a robust expectation for future climate change, supported by theory (e.g., Trenberth, 1999;O'Gorman andSchneider, 2009), modeling (e.g., O'Gorman, 2012;Tebaldi et al, 2006;Sillmann et al, 2013), and observations (e.g., Alexander et al, 2006;Lenderink et al, 2011;Asadieh and Krakauer, 2015). The effect of such changes on erosivity can only be assessed by using daily rainfall data.…”
Section: Erosivity Calculations Using the Observed Modified Fournier mentioning
confidence: 99%
“…Furthermore, critical infrastructure, such as power stations, has to be protected against extreme floods. Since floods are expected to increase due to climatic changes (Asadieh and Krakauer, 2015;Arnell and Gosling, 2016;Beniston et al, 2007;Bouwer, 2013;Fischer and Knutti, 2016;Millán, 2014;Pfahl et al, 2017;Rajczak et al, 2013;Scherrer et al, 2016), flood risk analyses and the management of extreme events will become even more relevant (Smolka, 2006;Yuan et al, 2017). Hence, insurance companies and governmental institutions are increasingly interested in quantifying flood risks, and especially in estimating the impacts of probable maximum floods leading to high cumulative losses (Burke et al, 2016;Morrill and Becker, 2017) or the destruction of critical infrastructure (Hasan and Foliente, 2015;Mechler et al, 2010;Michaelides, 2014).…”
Section: Introductionmentioning
confidence: 99%
“…extreme floods. Since floods are expected to increase due to climatic changes (Asadieh and Krakauer, 2015;Arnell and Gosling, 2016;Beniston et al, 2007;Bouwer, 2013;Fischer and Knutti, 2016;Millán, 2014;Pfahl et al, 2017;Rajczak et al, 2013;Scherrer et al 2016), flood risk analyses and the management of extreme events will become even more relevant (Smolka, 2006;Yuan et al, 2017). Hence, insurance companies as well as governmental institutions are increasingly interested in quantifying flood risks, and especially in estimating the impacts of probable maximum floods leading to high 5 cumulative losses (Burke et al, 2016;Morrill and Becker, 2017) or the destruction of critical infrastructure (Hasan and Foliente, 2015;Mechler et al, 2010;Michaelides, 2014).…”
Section: Introductionmentioning
confidence: 99%