2015
DOI: 10.1007/s00382-015-2625-y
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Non-stationary return levels of CMIP5 multi-model temperature extremes

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Cited by 21 publications
(15 citation statements)
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References 69 publications
(81 reference statements)
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“…Grotjahn () noted the CCSM4 distribution being narrower than the reanalysis. Cheng et al () find FGOALS‐g2 colder, in climatology and return values near the CCV, than the other models common to our study and theirs.…”
Section: Resultssupporting
confidence: 54%
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“…Grotjahn () noted the CCSM4 distribution being narrower than the reanalysis. Cheng et al () find FGOALS‐g2 colder, in climatology and return values near the CCV, than the other models common to our study and theirs.…”
Section: Resultssupporting
confidence: 54%
“…Grotjahn (2016) noted the CCSM4 distribution being narrower than the reanalysis. Cheng et al (2015) find FGOALS-g2 colder, in climatology and return values near the CCV, than the other models common to our study and theirs. Figure 5 shows future scenarios using both historical (Fh) and future (Ff) climatologies to define anomalies.…”
Section: Past and Future Lsmp Index Distributionssupporting
confidence: 50%
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“…The two NS FFA methods described in this review include (1) the use of precipitation projections from future climate scenarios in rainfall‐runoff models and (2) the use of a safety margin to adjust the design flood estimates derived from ST extreme value analysis (SEVA). While countries such as Norway, United Kingdom, Belgium, and Germany have adopted the safety margin approach in engineering guidelines [ Madsen et al ., ], the underlying ST assumption is often challenged and relaxed in the scientific literature to allow application of NS extreme value analysis (NEVA) [ AghaKouchak et al ., ; Begueria and Vicente‐Serrano , ; Begueria et al ., ; Cheng et al ., ; Cooley , ; Gilleland and Katz , ; Griffis and Stedinger , ; Katz , ; Lopez and Frances , ; Salas and Obeysekera , ; Silva et al ., ; Stedinger and Griffis , ; Tramblay et al ., ; Cheng et al ., ; Villarini et al ., ; Jakob , ; Steinschneider and Lall , ]. Indeed, the review by Madsen et al .…”
Section: Introductionmentioning
confidence: 99%