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Article Dans Une Revue Advances in Water Resources Année : 2014

Copula models for frequency analysis what can be learned from a Bayesian perspective?

Résumé

Large spring floods in the Quebec region exhibit correlated peakflow, duration and volume. Consequently, traditional univariate hydrological frequency analyses must be complemented by multivariate probabilistic assessment to provide a meaningful design flood level as requested in hydrological engineering (based on return period evaluation of a single quantity of interest). In this paper we study 47 years of a peak/volume dataset for the Romaine River with a parametric copula model. The margins are modeled with a normal or gamma distribution and the dependence is depicted through a parametric family of copulas (Arch 12 or Arch 14). Parameter joint inference and model selection are performed under the Bayesian paradigm. This approach enlightens specific features of interest for hydrological engineering: (i) cross correlation between margin parameters are stronger than expected, (ii) marginal distributions cannot be forgotten in the model selection process and (iii) special attention must be addressed to model validation as far as extreme values are of concern. (C) 2013 Elsevier Ltd. All rights reserved.
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Dates et versions

hal-01197621 , version 1 (11-09-2015)

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Éric Parent, Anne-Catherine Favre, Jacques Bernier, Luc Perreault. Copula models for frequency analysis what can be learned from a Bayesian perspective?. Advances in Water Resources, 2014, 63, pp.91-103. ⟨10.1016/j.advwatres.2013.10.013⟩. ⟨hal-01197621⟩
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