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首页> 外文期刊>Journal of hydrometeorology >On the Value of River Network Information in Regional Frequency Analysis
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On the Value of River Network Information in Regional Frequency Analysis

机译:论区域频率分析中河网络信息的价值

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Regional frequency analysis (RFA) is widely used in the design of hydraulic structures at locations where streamflow records are not available. RFA estimates depend on the precise delineation of homogenous regions for accurate information transfer. This study proposes new physiographical variables based on river network features and tests their potential to improve the accuracy of hydrological feature estimates. Information about river network types is used both in the definition of homogenous regions and in the estimation process. Data from 105 river basins in arid and semiarid regions of the United States were used in our analysis. Artificial neural network ensemble models and canonical correlation analysis were used to produce flood quantile estimates, which were validated through tenfold cross and jackknife validations. We conducted analysis for model performance based on statistical indices, such as the Nash-Sutcliffe efficiency, root-meansquare error, relative root-mean-square error, mean absolute error, and relative mean bias. Among various combinations of variables, a model with 10 variables produced the best performance. Further, 49, 36, and 20 river networks in the 105 basins were classified as dendritic, pinnate, and trellis networks, respectively. The model with river network classification for the homogenous regions appeared to provide a superior performance compared with a model without such classification. The results indicated that including our proposed combination of variables could improve the accuracy of RFA flood estimates with the classification of the network types. This finding has considerable implications for hydraulic structure design.
机译:区域频率分析(RFA)广泛应用于水流记录不可用位置的水工建筑物设计中。RFA估计取决于同质区域的精确划分,以实现准确的信息传递。本研究基于河网特征提出了新的地形变量,并测试了它们提高水文特征估计精度的潜力。关于河网类型的信息既用于同质区域的定义,也用于估算过程。我们的分析使用了来自美国干旱和半干旱地区105个流域的数据。人工神经网络集成模型和典型相关分析用于产生洪水分位数估计,并通过十倍交叉和刀切验证进行验证。我们基于统计指标对模型性能进行了分析,如纳什-萨特克利夫效率、均方根误差、相对均方根误差、平均绝对误差和相对平均偏差。在各种变量组合中,一个包含10个变量的模型产生了最好的性能。此外,105个流域中的49个、36个和20个河网分别被划分为树枝状、羽状和网格状河网。对于同质区域,具有河网分类的模型似乎比没有此类分类的模型提供了更好的性能。结果表明,包括我们提出的变量组合,可以通过网络类型的分类提高RFA洪水估计的准确性。这一发现对水工结构设计具有重要意义。

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