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Multivariate density model comparison for multi-site flood-risk rainfall in the French Mediterranean area

机译:法国地中海地区多站点洪灾风险的多变量密度模型比较

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摘要

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 from eight rain gauge stations at the Gardon at Anduze, a small Mediterranean catchment, are used in this work. Each multivariate density model is made of a combination of a marginal model and a dependence structure. Two marginal models are considered: the Gamma distribution (parametric) and the Log-Normal mixture (non-parametric). Four dependence structures are included in the comparison: Gaussian, Student t, Skew Normal and Skew t in increasing order of complexity. They possess a representative set of theoretical properties (symmetry/asymmetry and asymptotic dependence/independence). The multivariate models are compared in terms of three types of criteria: (1) separate evaluation of the goodness-of-fit of the margins and of the dependence structures, (2) model selection with a leave-one-out evaluation of the Anderson-Darling and Cramer-Von Mises statistics and (3) comparison in terms of two hydrologically interpretable quantities (return periods of the spatial average and conditional probabilities of exceedances). The key outcome of the comparison is that the Skew Normal with the Log-Normal mixture margins outperform significantly the other models. The asymmetry introduced by the Skew Normal is an added-value with respect to the Gaussian. Therefore, the Gaussian dependence structure, although widely used in the literature, is not recommended for the data in this study. In contrast, the asymptotically dependent models did not provide a significant improvement over the asymptotically independent ones.
机译:法国地中海地区遭受强烈降雨事件的影响,可能会引起山洪暴发,这是该地区的主要自然灾害。洪灾风险降雨定义为空间平均值较高的降雨,涵盖可能导致山洪暴发的降雨。我们旨在比较针对多点洪水风险降雨的八个多元密度模型。尤其是,准确描述洪水风险降雨的空间变异性对于帮助理解山洪暴发过程至关重要。这项工作使用了来自地中海小流域安杜兹(Anduze)Gardon的八个雨量计站的每日数据。每个多元密度模型由边际模型和依存结构的组合组成。考虑了两个边际模型:伽马分布(参数)和对数正态混合(非参数)。比较中包括四个依存关系结构:高斯,学生t,偏态法线和偏度t(按复杂度递增的顺序)。它们具有一组代表性的理论属性(对称性/非对称性和渐近依赖性/独立性)。根据三种类型的标准对多元模型进行比较:(1)对边距和依存关系的拟合优度进行单独评估,(2)通过对安德森的一劳永逸评估来选择模型-Darling和Cramer-Von Mises统计数据,以及(3)根据两个水文可解释的数量(空间平均值的返回期和超出的条件概率)进行比较。比较的主要结果是,具有对数-法线混合余量的“偏斜法线”明显优于其他模型。偏斜法线引入的不对称性是相对于高斯的增加值。因此,尽管在文献中广泛使用了高斯依赖结构,但本研究不推荐将其用于数据。相比之下,渐近依赖模型没有对渐近独立模型提供显着改进。

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