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首页> 外文期刊>Stochastic environmental research and risk assessment >Extension of observed flood series by combining a distributed hydro-meteorological model and a copula-based model
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Extension of observed flood series by combining a distributed hydro-meteorological model and a copula-based model

机译:通过结合分布式水文气象模型和基于copula的模型扩展观测洪水序列

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摘要

Long flood series are required to accurately estimate flood quantiles associated with high return periods, in order to design and assess the risk in hydraulic structures such as dams. However, observed flood series are commonly short. Flood series can be extended through hydro-meteorological modelling, yet the computational effort can be very demanding in case of a distributed model with a short time step is considered to obtain an accurate flood hydrograph characterisation. Statistical models can also be used, where the copula approach is spreading for performing multivariate flood frequency analyses. Nevertheless, the selection of the copula to characterise the dependence structure of short data series involves a large uncertainty. In the present study, a methodology to extend flood series by combining both approaches is introduced. First, the minimum number of flood hydrographs required to be simulated by a spatially distributed hydro-meteorological model is identified in terms of the uncertainty of quantile estimates obtained by both copula and marginal distributions. Second, a large synthetic sample is generated by a bivariate copula-based model, reducing the computation time required by the hydro-meteorological model. The hydro-meteorological modelling chain consists of the RainSim stochastic rainfall generator and the Real-time Interactive Basin Simulator (RIBS) rainfall-runoff model. The proposed procedure is applied to a case study in Spain. As a result, a large synthetic sample of peak-volume pairs is stochastically generated, keeping the statistical properties of the simulated series generated by the hydro-meteorological model. This method reduces the computation time consumed. The extended sample, consisting of the joint simulated and synthetic sample, can be used for improving flood risk assessment studies.
机译:为了设计和评估水坝等水力建筑的风险,需要较长的洪水序列来准确估算与高回报期有关的洪水量。但是,观测到的洪水序列通常很短。洪水序列可以通过水文气象建模来扩展,但是在考虑使用短时间步长的分布式模型来获得准确的洪水水文特征时,计算工作量可能会非常高。还可以使用统计模型,其中传播copula方法以执行多变量洪水频率分析。然而,选择连接词来表征短数据序列的依存结构具有很大的不确定性。在本研究中,介绍了通过结合两种方法来扩展洪水序列的方法。首先,根据由分布和边际分布获得的分位数估计的不确定性,确定需要由空间分布水文气象模型模拟的洪水水文图的最小数量。其次,通过基于二元copula的模型生成大量的合成样本,从而减少了水文气象模型所需的计算时间。水文气象建模链由RainSim随机降雨生成器和实时交互式流域模拟器(RIBS)降雨-径流模型组成。拟议的程序将应用于西班牙的案例研究。结果,随机生成了大量的峰-峰对合成样本,从而保持了由水文气象模型生成的模拟序列的统计特性。这种方法减少了计算时间。由联合模拟和合成样本组成的扩展样本可用于改进洪水风险评估研究。

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