Matches in SemOpenAlex for { <https://semopenalex.org/work/W4381835156> ?p ?o ?g. }
- W4381835156 endingPage "919" @default.
- W4381835156 startingPage "903" @default.
- W4381835156 abstract "In hydrology, extreme value analysis is normally applied at stationary yearly maxima. However, climate variability can bias the estimation of extremes by partially invalidating the stationary assumption. Extreme value analysis for sub-yearly data may depart from stationarity (since maxima from one month may not be exchangeable with maxima from another) in terms of requiring to include it in the analysis. Here, we analyse the non-stationary structure of extreme monthly rainfall in Spain using two approaches: a parametric approach and an approach based on autoregressive time series models. Our analysis considers seasonality, climate variability and long-term trends for both approaches, and it compares both including their goodness of fit and complexity. The approach uses maximum likelihood estimation and Bayesian techniques. Our results show that autoregressive models outperform parametric models, providing a more accurate representation of extreme events when extrapolating outside of the period of fit." @default.
- W4381835156 created "2023-06-24" @default.
- W4381835156 creator A5038454064 @default.
- W4381835156 creator A5053820649 @default.
- W4381835156 date "2023-05-04" @default.
- W4381835156 modified "2023-10-01" @default.
- W4381835156 title "Estimating extreme monthly rainfall for Spain using non-stationary techniques" @default.
- W4381835156 cites W1500657154 @default.
- W4381835156 cites W1586313814 @default.
- W4381835156 cites W1637606195 @default.
- W4381835156 cites W1681926796 @default.
- W4381835156 cites W1933324380 @default.
- W4381835156 cites W1970849095 @default.
- W4381835156 cites W1976791986 @default.
- W4381835156 cites W1984896961 @default.
- W4381835156 cites W1999992419 @default.
- W4381835156 cites W2001064652 @default.
- W4381835156 cites W2015944892 @default.
- W4381835156 cites W2028267147 @default.
- W4381835156 cites W2028432627 @default.
- W4381835156 cites W2052218905 @default.
- W4381835156 cites W2058815839 @default.
- W4381835156 cites W2072009271 @default.
- W4381835156 cites W2080426002 @default.
- W4381835156 cites W2084371780 @default.
- W4381835156 cites W2085856887 @default.
- W4381835156 cites W2088727480 @default.
- W4381835156 cites W2108719872 @default.
- W4381835156 cites W2109246257 @default.
- W4381835156 cites W2120575449 @default.
- W4381835156 cites W2122456939 @default.
- W4381835156 cites W2123399453 @default.
- W4381835156 cites W2123452224 @default.
- W4381835156 cites W2130902307 @default.
- W4381835156 cites W2139224138 @default.
- W4381835156 cites W2140327107 @default.
- W4381835156 cites W2149497359 @default.
- W4381835156 cites W2159689047 @default.
- W4381835156 cites W2163209546 @default.
- W4381835156 cites W2164370635 @default.
- W4381835156 cites W2164540610 @default.
- W4381835156 cites W2178352276 @default.
- W4381835156 cites W2214181032 @default.
- W4381835156 cites W2623199855 @default.
- W4381835156 cites W2782689178 @default.
- W4381835156 cites W2908928866 @default.
- W4381835156 cites W2910760077 @default.
- W4381835156 cites W3038343191 @default.
- W4381835156 cites W4236154753 @default.
- W4381835156 doi "https://doi.org/10.1080/02626667.2023.2193294" @default.
- W4381835156 hasPublicationYear "2023" @default.
- W4381835156 type Work @default.
- W4381835156 citedByCount "0" @default.
- W4381835156 crossrefType "journal-article" @default.
- W4381835156 hasAuthorship W4381835156A5038454064 @default.
- W4381835156 hasAuthorship W4381835156A5053820649 @default.
- W4381835156 hasBestOaLocation W43818351561 @default.
- W4381835156 hasConcept C105795698 @default.
- W4381835156 hasConcept C107673813 @default.
- W4381835156 hasConcept C117251300 @default.
- W4381835156 hasConcept C127313418 @default.
- W4381835156 hasConcept C142362112 @default.
- W4381835156 hasConcept C143724316 @default.
- W4381835156 hasConcept C147581598 @default.
- W4381835156 hasConcept C149782125 @default.
- W4381835156 hasConcept C151730666 @default.
- W4381835156 hasConcept C159877910 @default.
- W4381835156 hasConcept C169707849 @default.
- W4381835156 hasConcept C24574437 @default.
- W4381835156 hasConcept C33923547 @default.
- W4381835156 hasConcept C39432304 @default.
- W4381835156 hasConcept C49204034 @default.
- W4381835156 hasConcept C52119013 @default.
- W4381835156 hasConcept C554144382 @default.
- W4381835156 hasConcept C91528185 @default.
- W4381835156 hasConceptScore W4381835156C105795698 @default.
- W4381835156 hasConceptScore W4381835156C107673813 @default.
- W4381835156 hasConceptScore W4381835156C117251300 @default.
- W4381835156 hasConceptScore W4381835156C127313418 @default.
- W4381835156 hasConceptScore W4381835156C142362112 @default.
- W4381835156 hasConceptScore W4381835156C143724316 @default.
- W4381835156 hasConceptScore W4381835156C147581598 @default.
- W4381835156 hasConceptScore W4381835156C149782125 @default.
- W4381835156 hasConceptScore W4381835156C151730666 @default.
- W4381835156 hasConceptScore W4381835156C159877910 @default.
- W4381835156 hasConceptScore W4381835156C169707849 @default.
- W4381835156 hasConceptScore W4381835156C24574437 @default.
- W4381835156 hasConceptScore W4381835156C33923547 @default.
- W4381835156 hasConceptScore W4381835156C39432304 @default.
- W4381835156 hasConceptScore W4381835156C49204034 @default.
- W4381835156 hasConceptScore W4381835156C52119013 @default.
- W4381835156 hasConceptScore W4381835156C554144382 @default.
- W4381835156 hasConceptScore W4381835156C91528185 @default.
- W4381835156 hasIssue "7" @default.
- W4381835156 hasLocation W43818351561 @default.
- W4381835156 hasOpenAccess W4381835156 @default.
- W4381835156 hasPrimaryLocation W43818351561 @default.
- W4381835156 hasRelatedWork W1975837540 @default.