首页> 外文期刊>Hydrological sciences journal >Comparison of an artificial neural network and a conceptual rainfall-runoff model in the simulation of ephemeral streamflow
【24h】

Comparison of an artificial neural network and a conceptual rainfall-runoff model in the simulation of ephemeral streamflow

机译:人工流模拟中人工神经网络与概念性降雨径流模型的比较

获取原文
获取原文并翻译 | 示例
           

摘要

The rainfall-runoff process is governed by parameters that can seldom be measured directly for use with distributed models, but are rather inferred by expert judgment and calibrated against historical records. Here, a comparison is made between a conceptual model (CM) and an artificial neural network (ANN) for their ability to efficiently model complex hydrological processes. The Sacramento soil moisture accounting model (SAC-SMA) is calibrated using a scheme based on genetic algorithms and an input delay neural network (IDNN) is trained for variable delays and hidden layer neurons which are thoroughly discussed. The models are tested for 15 ephemeral catchments in Crete, Greece, using monthly rainfall, streamflow and potential evapotranspiration input. SAC-SMA performs well for most basins and acceptably for the entire sample with R-2 of 0.59-0.92, while scoring better for high than low flows. For the entire dataset, the IDNN improves simulation fit to R-2 of 0.70-0.96 and performs better for high flows while being outmatched in low flows. Results show that the ANN models can be superior to the conventional CMs, as parameter sensitivity is unclear, but CMs may be more robust in extrapolating beyond historical record limits and scenario building.
机译:降雨径流过程受参数的控制,这些参数很少可以直接测量以用于分布式模型,而是由专家判断得出并根据历史记录进行校准。在这里,对概念模型(CM)和人工神经网络(ANN)进行有效建模复杂水文过程的能力进行了比较。萨克拉曼多土壤水分核算模型(SAC-SMA)使用基于遗传算法的方案进行了校准,输入延迟神经网络(IDNN)则针对可变延迟和隐藏层神经元进行了训练,对此进行了全面讨论。使用每月的降雨,水流和潜在的蒸散输入,对模型在希腊克里特岛的15个临时集水区进行了测试。 SAC-SMA在大多数盆地中表现良好,并且在整个样本中的R-2为0.59-0.92,可以接受,而高流量的得分则高于低流量。对于整个数据集,IDNN改进了对R-2的仿真拟合(0.70-0.96),并在高流量时表现更好,而在低流量时却表现不佳。结果表明,由于参数敏感性尚不清楚,因此ANN模型可以优于常规CM,但是CM在推断超出历史记录限制和场景构建时可能更健壮。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号