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Bivariate Flood Frequency Analysis Using Copulas

机译:使用Copulas进行二元洪水频率分析

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Flood frequency estimation for the design of hydraulic structures is usually performed as a univariate analysis of flood event magnitudes. However, recent studies show that for accurate return period estimation of the flood events, the dependence and the correlation pattern among flood attribute characteristics, such as peak discharge, volume and duration should be taken into account in a multivariate framework. The primary goal of this study is to compare univariate and joint bivariate return periods of floods that all rely on different probability concepts in Yermasoyia watershed, Cyprus. Pairs of peak discharge with corresponding flood volumes are estimated and compared using annual maximum series (AMS) and peaks over threshold (POT) approaches. The Lyne-Hollick recursive digital filter is applied to separate baseflow from quick flow and to subsequently estimate flood volumes from the quick flow timeseries. Marginal distributions of flood peaks and volumes are examined and used for the estimation of typical design periods. The dependence between peak discharges and volumes is then assessed by an exploratory data analysis using K-plots and Chi-plots, and the consistency of their relationship is quantified by Kendalla??s correlation coefficient. Copulas from Archimedean, Elliptical and Extreme Value families are fitted using a pseudo-likelihood estimation method, verified using both graphical approaches and a goodness-of-fit test based on the Cram??r-von Mises statistic and evaluated according to the corrected Akaike Information Criterion. The selected copula functions and the corresponding joint return periods are calculated and the results are compared with the marginal univariate estimations of each variable. Results indicate the importance of the bivariate analysis in the estimation of design return period of the hydraulic structures.
机译:用于水工结构设计的洪水频率估算通常作为洪水事件幅度的单变量分析来执行。但是,最近的研究表明,为了准确估算洪水事件的返回期,应在多变量框架中考虑洪水属性特征(如高峰流量,流量和持续时间)之间的依赖性和相关性。这项研究的主要目的是比较塞浦路斯Yermasoyia流域的洪水单变量和联合双变量洪水返回期,这些时期都依赖于不同的概率概念。使用年度最大序列(AMS)和峰值超过阈值(POT)方法估算并比较成对的峰值流量和相应的洪水量。 Lyne-Hollick递归数字滤波器用于将基本流与快速流分开,并随后根据快速流时间序列估算洪水量。检查洪水高峰和洪水的边际分布,并将其用于估算典型设计时期。然后通过探索性数据分析使用K-plots和Chi-plots评估峰值流量与体积之间的依赖性,并通过Kendalla?相关系数量化它们之间关系的一致性。使用伪似然估计方法拟合来自Archimedean,Elliptical和Extreme Value系列的Copulas,使用图形方法和拟合优度检验(基于Cram ?? r-von Mises统计数据)进行验证,并根据校正的Akaike进行评估信息准则。计算选定的copula函数和相应的联合返回期,并将结果与​​每个变量的边际单变量估计值进行比较。结果表明,在估算水工结构的设计回收期中,双变量分析的重要性。

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