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首页> 外文期刊>Natural Hazards >Design flood estimation in ungauged catchments using genetic algorithm-based artificial neural network (GAANN) technique for Australia
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Design flood estimation in ungauged catchments using genetic algorithm-based artificial neural network (GAANN) technique for Australia

机译:澳大利亚基于遗传算法的人工神经网络(GAANN)技术对非流域集水设计洪水的估算

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摘要

This paper focuses on the development and testing of the genetic algorithm (GA)-based regional flood frequency analysis (RFFA) models for eastern parts of Australia. The GA-based techniques do not impose a fixed model structure on the data and can better deal with nonlinearity of the input and output relationship. These nonlinear techniques have been applied successfully in many hydrologic problems; however, there have been only limited applications of these techniques in RFFA problems, particularly in Australia. A data set comprising of 452 stations is used to test the GA for artificial neural networks (ANN) optimization known as GAANN. The results from GAANN were compared with the results from back-propagation for ANN optimization known as BPANN. An independent testing shows that both the GAANN and BPANN methods are quite successful in RFFA and can be used as alternative methods to check the validity of the traditional linear models such as quantile regression technique.
机译:本文着重于澳大利亚东部地区基于遗传算法(GA)的区域洪水频率分析(RFFA)模型的开发和测试。基于GA的技术不会在数据上施加固定的模型结构,并且可以更好地处理输入和输出关系的非线性。这些非线性技术已成功应用于许多水文问题。但是,这些技术在RFFA问题中的应用有限,特别是在澳大利亚。由452个站点组成的数据集用于测试GA,以进行称为GAANN的人工神经网络(ANN)优化。将GAANN的结果与反向传播的ANN优化(称为BPANN)的结果进行了比较。一项独立的测试表明,GAANN和BPANN方法在RFFA中都非常成功,可以用作检验传统线性模型(如分位数回归技术)有效性的替代方法。

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