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Stochastic daily precipitation model with a heavy-tailed component

机译:重尾成分的随机日降水模型

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Stochastic daily precipitation models are commonly used to generate scenarios of climate variability or change on a daily timescale. The standard models consist of two components describing the occurrence and intensity series, respectively. Binary logistic regression is used to fit the occurrence data, and the intensity series is modeled using a continuous-valued right-skewed distribution, such as gamma, Weibull or lognormal. The precipitation series is then modeled using the joint density, and standard software for generalized linear models can be used to perform the computations. A drawback of these precipitation models is that they do not produce a sufficiently heavy upper tail for the distribution of daily precipitation amounts; they tend to underestimate the frequency of large storms. In this study, we adapted the approach of Furrer and Katz (2008) based on hybrid distributions in order to correct for this shortcoming. In particular, we applied hybrid gamma-generalized Pareto (GP) and hybrid Weibull-GP distributions to develop a stochastic precipitation model for daily rainfall at Ihtiman in western Bulgaria. We report the results of simulations designed to compare the models based on the hybrid distributions and those based on the standard distributions. Some potential difficulties are outlined.
机译:随机的每日降水模型通常用于生成气候变化或每日时间尺度变化的情景。标准模型由分别描述发生和强度序列的两个组件组成。二元逻辑回归用于拟合事件数据,强度序列使用连续值的右偏分布建模,例如伽玛,威布尔或对数正态。然后使用联合密度对降水序列进行建模,并且可以使用用于广义线性模型的标准软件来执行计算。这些降水模型的一个缺点是,它们无法产生足够重的上尾巴来分配每日的降水量。他们往往低估了大风暴的发生频率。在这项研究中,我们根据混合分布调整了Furrer和Katz(2008)的方法,以纠正这一缺陷。特别是,我们应用了混合伽玛-广义帕累托(GP)和混合威布尔-GP分布,为保加利亚西部Ihtiman的日降水量建立了随机降水模型。我们报告了仿真结果,这些仿真结果旨在比较基于混合分布的模型和基于标准分布的模型。概述了一些潜在的困难。

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