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首页> 外文期刊>Stochastic environmental research and risk assessment >Establishing acceptance regions for L-moments based goodness-of-fit tests for the Pearson type III distribution
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Establishing acceptance regions for L-moments based goodness-of-fit tests for the Pearson type III distribution

机译:为Pearson III型分布的基于L矩的拟合优度测试建立接受区域

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摘要

Goodness-of-fit tests based on the L-moment-ratio diagram for selection of appropriate distributions for hydrological variables have had many applications in recent years. For such applications, sample-size-dependent acceptance regions need to be established in order to take into account the uncertainties induced by sample L-skewness and L-kurtosis. Acceptance regions of two-parameter distributions such as the normal and Gumbel distributions have been developed. However, many hydrological variables are better characterized by three-parameter distributions such as the Pearson type III and generalized extreme value distributions. Establishing acceptance regions for these three-parameter distributions is more complicated since their L-moment-ratio diagrams plot as curves, instead of unique points for two-parameter distributions. Through stochastic simulation we established sample-size-dependent 95% acceptance regions for the Pearson type III distribution. The proposed approach involves two key elements—the conditional distribution of population L-skewness given a sample L-skewness and the conditional distribution of sample L-kurtosis given a sample L-skewness. The established 95% acceptance regions of the Pearson type III distribution were further validated through two types of validity check, and were found to be applicable for goodness-of-fit tests for random samples of any sample size between 20 and 300 and coefficient of skewness not exceeding 3.0.
机译:近年来,基于L矩比图的拟合优度测试用于选择水文变量的适当分布。对于此类应用,需要建立依赖于样本大小的接受区域,以考虑到样本L偏度和L峰度引起的不确定性。已经开发了两个参数分布的接受区域,例如正态分布和Gumbel分布。但是,许多水文变量可以通过三参数分布(如Pearson III型)和广义极值分布更好地表征。为这些三参数分布建立接受区域更加复杂,因为它们的L矩比图以曲线形式绘制,而不是为两参数分布的唯一点绘制。通过随机模拟,我们为Pearson III型分布建立了取决于样本大小的95%接受区域。所提出的方法涉及两个关键要素:给定样本L偏度时的人口L偏度的条件分布和考虑样本L偏度时的样本L峰度的条件分布。已通过两种类型的有效性检查进一步验证了已建立的Pearson III型分布的95%接受区域,并发现它们适用于20至300之间任何样本量和偏度系数的随机样本的拟合优度检验不超过3.0。

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