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Assessment of a conceptual hydrological model and artificial neural networks for daily outflows forecasting.

机译:评估概念性水文模型和人工神经网络,以进行每日流量预测。

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Artificial neural networks (ANNs) are used by hydrologists and engineers to forecast flows at the outlet of a watershed. They are employed in particular where hydrological data are limited. Despite these developments, practitioners still prefer conventional hydrological models. This study applied the standard conceptual HEC-HMS's soil moisture accounting (SMA) algorithm and the multi layer perceptron (MLP) for forecasting daily outflows at the outlet of Khosrow Shirin watershed in Iran. The MLP [optimized with the scaled conjugate gradient] used the logistic and tangent sigmoid activation functions resulting into 12 ANNs. The R2 and RMSE values for the best trained MPLs using the tangent and logistic sigmoid transfer function were 0.87, 1.875 m3 s-1 and 0.81, 2.297 m3 s-1, respectively. The results showed that MLPs optimized with the tangent sigmoid predicted peak flows and annual flood volumes more accurately than the HEC-HMS model with the SMA algorithm, with R2 and RMSE values equal to 0.87, 0.84 and 1.875 and 2.1 m3 s-1, respectively. Also, an MLP is easier to develop due to using a simple trial and error procedure. Practitioners of hydrologic modeling and flood flow forecasting may consider this study as an example of the capability of the ANN for real world flow forecasting.Digital Object Identifier http://dx.doi.org/10.1007/s13762-013-0209-0
机译:水文学家和工程师使用人工神经网络(ANN)来预测流域出口处的流量。它们尤其用于水文数据有限的地方。尽管有这些发展,但是从业者仍然喜欢常规的水文模型。这项研究应用了标准的概念性HEC-HMS的土壤水分核算(SMA)算法和多层感知器(MLP)来预测伊朗Khosrow Shirin流域出口处的每日流出量。 MLP [使用比例共轭梯度进行了优化]使用对数和切线S型激活函数,生成了12个ANN。使用切线和逻辑乙状乙状传递函数的训练有素的MPL的R 2 和RMSE值分别为0.87、1.875 m 3 s -1 和分别为0.81、2.297 m 3 s -1 。结果表明,与使用SMA算法的HEC-HMS模型相比,使用切线S型优化的MLP预测的峰值流量和年洪水量更准确,R 2 和RMSE值分别为0.87、0.84和1.875和2.1 m 3 s -1 。而且,由于使用了简单的反复试验程序,MLP更易于开发。水文模型和洪水流量预报的从业者可以将本研究作为ANN在现实世界中进行流量预报的能力的示例。数字对象标识符http://dx.doi.org/10.1007/s13762-013-0209-0

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