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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Frequency Analysis of Nonidentically Distributed Hydrometeorological Extremes Associated with Large-Scale Climate Variability Applied to South Korea
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Frequency Analysis of Nonidentically Distributed Hydrometeorological Extremes Associated with Large-Scale Climate Variability Applied to South Korea

机译:应用于大尺度气候变化的非均匀分布水文气象极端事件的频率分析在韩国的应用

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摘要

In the frequency analyses of extreme hydrometeorological events, the restriction of statistical independence and identical distribution (iid) from year to year ensures that all observations are from the same population. In recent decades, the iid assumption for extreme events has been shown to be invalid in many cases because long-term climate variability resulting from phenomena such as the Pacific decadal variability and El Nio-Southern Oscillation may induce varying meteorological systems such aspersistent wet years and dry years. Therefore, the objective of the current study is to propose a new parameter estimation method for probability distribution models to more accurately predict the magnitude of future extreme events when the iid assumption of probability distributions for large-scale climate variability is not adequate. The proposed parameter estimation is based on a metaheuristic approach and is derived from the objective function of the rth power probability-weighted sum of observations in increasing order. The combination of two distributions, gamma and generalized extreme value (GEV), was fitted to the GEV distribution in a simulation study. In addition, a case study examining the annual hourly maximum precipitation of all stationsin South Korea was performed to evaluate the performance of the proposed approach. The results of the simulation study and case study indicate that the proposed metaheuristic parameter estimation method is an effective alternative for accurately selecting the rth power when the iid assumption of extreme hydrometeorological events is not valid for large-scale climate variability. The maximum likelihood estimate is more accurate with a low mixing probability, and the probability-weighted moment method isa moderately effective option.
机译:在极端水文气象事件的频率分析中,每年的统计独立性和相同分布(iid)的局限性确保了所有观测值都来自同一人群。在最近几十年中,极端事件的iid假设在许多情况下被证明是无效的,因为由太平洋年代际变率和厄尔尼诺-南方涛动等现象引起的长期气候变率可能会诱发各种气象系统,例如持续的湿润年份和干年。因此,本研究的目的是为概率分布模型提出一种新的参数估计方法,以在大范围气候变化的概率分布的iid假设不足时更准确地预测未来极端事件的强度。所提出的参数估计是基于元启发式方法的,并且是从第r次幂概率加权观测值总和的目标函数按升序得出的。在模拟研究中,将伽玛和广义极值(GEV)两种分布的组合拟合到GEV分布。此外,还进行了一项案例研究,考察了韩国所有气象站的每小时最大降水量,以评估该方法的性能。仿真研究和案例研究的结果表明,当极端水文气象事件的同上假设对于大规模气候变化无效时,所提出的元启发式参数估计方法是一种有效选择rth功率的有效替代方法。最大似然估计在较低的混合概率下更为准确,而概率加权矩量法是中等有效的选择。

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