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Flood frequency analysis: Confidence interval estimation by test inversion bootstrapping

机译:洪水频率分析:通过测试反演自举估计置信区间

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A common approach to estimate extreme flood events is the annual block maxima approach, where for each year the peak streamflow is determined and a distribution( usually the generalized extreme value distribution (GEV)) is fitted to this series of maxima. Eventually this distribution is used to estimate the return level for a defined return period. However, due to the finite sample size, the estimated return levels are associated with a range of uncertainity, usually expressed via confidence intervals. Previous publications have shown that existing bootstrapping methods for estimating the confidence intervals of the GEV yield too narrow estimates of these uncertainty ranges. Therefore, we present in this article a novel approach based on the less known test inversion bootstrapping, which we adapted especially for complex quantities like the return level. The reliability of this approach is studied and its performance is compared to other bootstrapping methods as well as the Profile Likelihood technique. It is shown that the new approach improves significantly the coverage of confidence intervals compared to other bootstrapping methods and for small sample sizes should even be favoured over the Profile Likelihood. (C) 2015 Elsevier Ltd. All rights reserved.
机译:估算极端洪水事件的常用方法是年度区块最大值方法,其中每年确定峰值流量,并为此系列最大值拟合分布(通常是广义的极值分布(GEV))。最终,此分布用于估计定义的退货期的退货水平。但是,由于样本数量有限,估计的回报水平与不确定性范围相关,通常通过置信区间表示。先前的出版物表明,现有的用于估计GEV的置信区间的自举方法对这些不确定性范围的估计太窄了。因此,在本文中,我们提出了一种基于鲜为人知的测试反转自举的新颖方法,该方法特别适合于复杂的数量(如返回水平)。研究了这种方法的可靠性,并将其性能与其他自举方法以及配置文件似然技术进行了比较。结果表明,与其他自举方法相比,该新方法显着改善了置信区间的覆盖范围,对于小样本量,甚至应优于配置文件似然法。 (C)2015 Elsevier Ltd.保留所有权利。

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