极端事件的功率归一化鲁棒极端回归水平:实际水文数据的应用

IF 0.2 Q4 MULTIDISCIPLINARY SCIENCES
Abdellah Belhajjam, Belbachir Mohammadine, Saad Elouardirhi
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引用次数: 0

摘要

在罕见和灾难性现象的统计研究中,通常选择线性归一化下的广义极值分布作为合适的模型。它用来估计尚未观察到的事件的概率。近年来,极值理论(EVT)在理论和实践上都受到了广泛的关注,它仅使用经典的线性模型(L-Model)或极值的线性归一化来估计收益水平。因此,本文提出了一种新的基于非线性归一化下广义极值分布的乘法模型,其目的是提出两种模型之间的优缺点。我们的主要目标是使用我们的乘法模型(p模型)来计算回报水平,以及相关的置信区间。研究了两种模型(线性和非线性)的诊断拟合、检验和统计推断。最后,首先对摩洛哥和澳大利亚南部的实际水文数据进行了数据分析和讨论,然后对加拿大伊利湖的水位进行了分析和讨论。结果表明,我们的乘法(非线性)模型考虑了回归期的变化,具有较好的自适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ROBUST EXTREME RETURN LEVEL WITH POWER NORMALIZATION FOR EXTREME EVENTS: APPLICATION OF REAL HYDROLOGY DATA
In statistical studies of rare and catastrophic phenomena the distribution of generalized extreme values under linear normalization is always chosen as the appropriate model. It used to estimate the probabilities of events that have not yet been observed. Recently, the extreme value theory (EVT) received a lot of attention both theoretically and practically using just the classical linear model (L-Model) or linear normalization of the maximum to estimate return level. So, in this paper we propose a new multiplicative model based on the distribution of generalized extreme values under non-linear normalization, whose purpose is to raise the strong and weak points between these two models. Our main goal is to use our multiplicative model (P-model) to calculate the return level, as well as the associated confidence interval. The diagnostic fit, test and statistical inference to compare the two models (linear and non-linear) are studied. Finally, a data analysis and discussion are applied at first on real hydrological data for Morocco and South of Australia, then on water levels of lake Erié in Canada. The results show that our multiplicative (non-linear) model is more adaptive because it takes into account the variation of the return period.
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来源期刊
Suranaree Journal of Science and Technology
Suranaree Journal of Science and Technology MULTIDISCIPLINARY SCIENCES-
CiteScore
0.30
自引率
50.00%
发文量
0
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