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首页> 外文期刊>Journal of Hydrology >Complexity selection of a neural network model for karst flood forecasting: The case of the Lez Basin (southern France)
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Complexity selection of a neural network model for karst flood forecasting: The case of the Lez Basin (southern France)

机译:喀斯特洪水预报神经网络模型的复杂性选择:以勒兹盆地为例(法国南部)

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摘要

A neural network model is applied to simulate the rainfall-runoff relation of a karst spring. The input selection for such a model becomes a major issue when deriving a parsimonious and efficient model. The present study is focused on these input selection methods; it begins by proposing two such methods and combines them in a subsequent step. The methods introduced are assessed for both simulation and forecasting purposes. Since rainfall is very difficult to forecast, especially in the study area, we have chosen a forecasting mode that does not require any rainfall forecast assumptions. This application has been implemented on the Lez karst aquifer, a highly complex basin due to its structure and operating conditions. Our models yield very good results, and the forecasted discharge values at the Lez spring are acceptable up to a 1-day forecasting horizon. The combined input selection method ultimately proves to be promising, by reducing input selection time while taking into account: (i) the model's ability to accommodate nonlinearity and (ii) the forecasting horizon.
机译:应用神经网络模型模拟岩溶泉水的降雨-径流关系。在推导简约高效的模型时,此类模型的输入选择成为主要问题。本研究集中于这些输入选择方法。首先提出两种这样的方法,然后在后续步骤中将它们结合起来。为了模拟和预测目的对引入的方法进行了评估。由于降雨很难预报,尤其是在研究地区,因此我们选择了一种无需任何降雨预报假设的预报模式。由于其结构和运行条件,该应用已在高度复杂的Lez岩溶含水层上实现。我们的模型产生了很好的结果,并且在1天的预测范围内,在Lez春季的预测排放值是可以接受的。通过减少输入选择时间,同时考虑以下因素,组合输入选择方法最终被证明是有前途的:(i)模型适应非线性的能力和(ii)预测范围。

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