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Using feed forward neural networks to model the effect of precipitation on the water levels of the Northeast Cape Fear river

机译:使用前馈神经网络模拟降水对东北开普菲尔河水位的影响

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The impact of major flooding events in the United States points to a need to discover an effective method of forecasting changes in river flow which could lead to area flooding. Proper modeling of rainfall and runoff is important, but first-principles modeling is difficult and not plastic. Neural networks provide a data-driven modeling tool capable of capturing the relationship between rainfall and river flow. The work reported here indicates that neural networks are capable of making reliable forecasts of river flow.
机译:在美国,主要的洪水事件的影响表明,需要找到一种有效的方法来预测可能导致区域洪水的河流流量变化。正确的降雨和径流建模很重要,但是第一性原理建模很困难,而且不是可塑性的。神经网络提供了一种数据驱动的建模工具,能够捕获降雨和河流流量之间的关系。这里报道的工作表明,神经网络能够对河流流量做出可靠的预测。

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