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An evaluation of automated GPD threshold selection methods for hydrological extremes across different scales

机译:不同尺度水文极端自动GPD阈值选择方法的评估

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摘要

This study investigated core components of an extreme value methodology for the estimation of high-flow frequencies from agricultural surface water run-off. The Generalized Pareto distribution (GPD) was used to model excesses in time-series data that resulted from the 'Peaks Over Threshold' (POT) method. First, the performance of eight different GPD parameter estimators was evaluated through a Monte Carlo experiment. Second, building on the estimator comparison, two existing automated GPD threshold selection methods were evaluated against a proposed approach that automates the threshold stability plots. For this second experiment, methods were applied to discharge measured at a highly-instrumented agricultural research facility in the UK. By averaging fine-resolution 15-minute data to hourly, 6-hourly and daily scales, we were also able to determine the effect of scale on threshold selection, as well as the performance of each method. The results demonstrate the advantages of the proposed threshold selection method over two commonly applied methods, while at the same time providing useful insights into the effect of the choice of the scale of measurement on threshold selection. The results can be generalised to similar water monitoring schemes and are important for improved characterisations of flood events and the design of associated disaster management protocols.
机译:本研究研究了极值方法的核心组成部分,用于估计农业表面水径流的高流量频率。广义帕吻孔分布(GPD)用于在时间序列数据中模拟过量的,从“阈值”(POT)方法中引起的。首先,通过蒙特卡罗实验评估八个不同GPD参数估计的性能。其次,在估算器比较上建立两个现有的自动化GPD阈值选择方法,针对自动化阈值稳定性图的提出方法进行评估。对于该第二实验,将方法应用于在英国的高级农业研究设施中测量的放电。通过对每小时的微分辨率的15分钟数据进行平均,6小时和每日等级,我们还能够确定规模对阈值选择的影响,以及每种方法的性能。结果证明了所提出的阈值选择方法在两种常用方法上的优点,同时提供有用的见解,以对阈值选择的测量规模的选择作用。结果可以推广到类似的水监测方案,对于改善洪水事件的特征以及相关灾害管理协议的设计是重要的。

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