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Hydrological model calibration for derived flood frequency analysis using stochastic rainfall and probability distributions of peak flows

机译:基于随机降雨和峰值流量概率分布的洪水频率分析的水文模型校准

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摘要

Derived flood frequency analysis allows the estimation of design floods with hydrological modeling for poorly observed basins considering change and taking into account flood protection measures. There are several possible choices regarding precipitation input, discharge output and consequently the calibration of the model. The objective of this study is to compare different calibration strategies for a hydrological model considering various types of rainfall input and runoff output data sets and to propose the most suitable approach. Event based and continuous, observed hourly rainfall data as well as disaggregated daily rainfall and stochastically generated hourly rainfall data are used as input for the model. As output, short hourly and longer daily continuous flow time series as well as probability distributions of annual maximum peak flow series are employed. The performance of the strategies is evaluated using the obtained different model parameter sets for continuous simulation of discharge in an independent validation period and by comparing the model derived flood frequency distributions with the observed one. The investigations are carried out for three mesoscale catchments in northern Germany with the hydrological model HEC-HMS (Hydrologic Engineering Center's Hydrologic Modeling System). The results show that (I) the same type of precipitation input data should be used for calibration and application of the hydrological model, (II) a model calibrated using a small sample of extreme values works quite well for the simulation of continuous time series with moderate length but not vice versa, and (III) the best performance with small uncertainty is obtained when stochastic precipitation data and the observed probability distribution of peak flows are used for model calibration. This outcome suggests to calibrate a hydrological model directly on probability distributions of observed peak flows using stochastic rainfall as input if its purpose is the application for derived flood frequency analysis.
机译:推导的洪水频率分析允许在考虑变化并考虑防洪措施的情况下,通过水文模型对观测较差的盆地进行设计洪水的估算。关于降水输入,排放输出以及模型的校准,有几种可能的选择。这项研究的目的是比较考虑了各种类型的降雨输入和径流输出数据集的水文模型的不同校准策略,并提出最合适的方法。基于事件的,连续的,观测的每小时降雨量数据以及分类的每日降雨量和随机生成的每小时降雨量数据被用作模型的输入。作为输出,使用每小时和每天更长的连续流量时间序列以及年度最大峰值流量序列的概率分布。使用获得的不同模型参数集对策略的性能进行评估,以在独立的有效期内对排放进行连续模拟,并将模型导出的洪水频率分布与观察到的洪水频率分布进行比较。使用水文模型HEC-HMS(水文工程中心的水文建模系统)对德国北部的三个中尺度流域进行了调查。结果表明(I)应当使用相同类型的降水输入数据进行水文模型的校准和应用,(II)使用少量极值样本进行校准的模型对于连续时间序列的模拟非常有效。长度适中,反之则不然;(III)当使用随机降水数据和观测到的峰值流量概率分布进行模型校准时,可获得最佳性能且不确定性较小。该结果表明,如果其目的是用于导出洪水频率分析,则可以使用随机降雨作为输入直接根据观测到的峰值流量的概率分布来校准水文模型。

著录项

  • 作者

    Haberlandt Uwe; Radtke I.;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 eng
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