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Application of artificial neural networks in regional flood frequency analysis: a case study for Australia

机译:人工神经网络在区域洪水频率分析中的应用:以澳大利亚为例

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摘要

Regional flood frequency analysis (RFFA) is widely used in practice to estimate flood quantiles in un-gauged catchments. Most commonly adopted RFFA methods such as quantile regression technique (QRT) assume a log-linear relationship between the dependent and a set of predictor variables. As non-linear models and universal approximators, artificial neural networks (ANN) have been widely adopted in rainfall runoff modeling and hydrologic forecasting, but there have been relatively few studies involving the application of ANN to RFFA for estimating flood quantiles in ungauged catchments. This paper thus focuses on the development and testing of an ANN-based RFFA model using an extensive Australian database consisting of 452 gauged catchments. Based on an independent testing, it has been found that ANN-based RFFA model with only two predictor variables can provide flood quantile estimates that are more accurate than the traditional QRT. Seven different regions have been compared with the ANN-based RFFA model and it has been shown that when the data from all the eastern Australian states are combined together to form a single region, the ANN presents the best performing RFFA model. This indicates that a relatively larger dataset is better suited for successful training and testing of the ANN-based RFFA models.
机译:在实践中,广泛使用区域洪水频率分析(RFFA)来估算未测量集水区的洪水分位数。最常用的RFFA方法(例如分位数回归技术(QRT))假设因变量和一组预测变量之间存在对数线性关系。作为非线性模型和通用逼近器,人工神经网络(ANN)已被广泛用于降雨径流建模和水文预报,但是涉及将ANN应用于RFFA来估算非流域集水量的研究相对较少。因此,本文着重于使用由452个测量集水区组成的广泛的澳大利亚数据库开发和测试基于ANN的RFFA模型。根据独立测试,已经发现只有两个预测变量的基于ANN的RFFA模型可以提供比传统QRT更准确的洪水分位数估计。已将七个不同的区域与基于ANN的RFFA模型进行了比较,结果表明,将来自澳大利亚东部所有州的数据组合在一起形成一个区域时,ANN会提供性能最佳的RFFA模型。这表明相对较大的数据集更适合成功训练和测试基于ANN的RFFA模型。

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