2015
DOI: 10.1007/s00477-015-1166-6
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Multivariate density model comparison for multi-site flood-risk rainfall in the French Mediterranean area

Abstract: The French Mediterranean area is subject to intense rainfall events which might cause flash floods, the main natural hazard in the area. Flood-risk rainfall is defined as rainfall with a high spatial average and encompasses rainfall which might lead to flash floods. We aim to compare eight multivariate density models for multi-site flood-risk rainfall. In particular, an accurate characterization of the spatial variability of flood-risk rainfall is crucial to help understand flash flood processes. Daily data fr… Show more

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Cited by 14 publications
(4 citation statements)
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“…However, unlike Gaussian bivariate distributions, the marginal variables can follow any distribution and are, thus, not limited to solely follow a Gaussian distribution. The Student-t copula is characterized by a greater modeling flexibility in terms of tail dependence (Carreau & Bouvier, 2016), which is enabled by an additional degree-of-freedom parameter compared to the Gaussian copula.…”
Section: Elliptical Copulasmentioning
confidence: 99%
“…However, unlike Gaussian bivariate distributions, the marginal variables can follow any distribution and are, thus, not limited to solely follow a Gaussian distribution. The Student-t copula is characterized by a greater modeling flexibility in terms of tail dependence (Carreau & Bouvier, 2016), which is enabled by an additional degree-of-freedom parameter compared to the Gaussian copula.…”
Section: Elliptical Copulasmentioning
confidence: 99%
“…Due to the randomness of rainfall, its distribution in time and space is not uniform, which has a great impact on hydrological simulation. Carreau et al (2016) used daily data from eight rain gauge stations in the Gardon River catchment in Anduze, France, to make an accurate characterization of the spatial variability of flood-risk rainfall. Zoccatelli et al (2010) used a spatial rainfall metric to clarify the dependence between spatial rainfall organization, basin morphology and runoff response.…”
Section: Introductionmentioning
confidence: 99%
“…Because of the random characteristic of rainfall, the spatial and temporal distribution of rainfall is not uniform, which enormously affects the simulation results of hydrological models. Many studies have investigated the influence of rainfall spatial distribution on hydrological models (Douinot et al, 2016;Carreau and Bouvier, 2016;Zoccatelli et al, 2010). However, the spatial size of a small watershed within a mountainous region is small, hence the rainfall temporal distribution is mainly considered in this study.…”
Section: Introductionmentioning
confidence: 99%