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Enhancing the Forecasting of Monthly Streamflow in the Main Key Stations of the River Nile Basins

机译:加强尼罗河盆地主要主要站的每月流流量的预测

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摘要

Predicting the streamflow of rivers can have a significant economic impact, as this can help in agricultural water management and in providing protection from water shortages and possible flood damage. In this study, two statistical models have been used; Deseasonalized Autoregressive moving average model (DARMA) and Artificial Neural Network (ANN) to predict monthly streamflow which important for reservoir operation policy using different time scale, monthly and 1/3 monthly (ten-days) flow data for River Nile basin at five key stations. The streamflow series is deseasonalized at different time scale and then an appropriate nonseasonal stochastic DARMA (p, q) models are built by using the plots of Partial Auto Correlation Function (PACF) to determine the order (p) of DARMA model. Then the deseasonalized data for key stations are used as input to ANN models with lags equals to the order (p) of DARMA model. The performance of ANN and DARMA models are compared using statistical methods. The results show that the developed model (using 1/3 monthly (ten-days) and ANN) has the best performance to predict monthly streamflow at all key stations. The results also show that the relative error in the developed model result did not exceed 9% while in the traditional models reach to 68% in the flood months in the testing period. The result also indicates that ANN has considerable potential for river flow forecasting.
机译:预测河流的流出可能会产生重大的经济影响,因为这可以有助于农业水资源管理,并提供水资源短缺和可能的洪水损坏。在这项研究中,已经使用了两个统计模型;临时归属自动增加移动平均模型(DARMA)和人工神经网络(ANN)预测每月流程流,这对于使用不同时间尺度,每月和1/3月(十天)流量数据的水库操作策略在五个关键处站。 Streamflow系列在不同的时间尺度下被任命为不同的时间尺度,然后通过使用部分自动相关函数(PACF)的曲线来确定适当的非分叉随机Darma(P,Q)模型来确定Darma模型的顺序(P)。然后,关键站的临时化数据用作ANN模型的输入,滞后等于Darma模型的订单(P)。使用统计方法进行比较ANN和DARMA模型的性能。结果表明,开发的模型(使用1/3每月(十天)和ANN)具有最佳性能,以预测所有主要站的每月流流程。结果还表明,开发的模型结果中的相对误差不超过9%,而在传统模型中,在测试期间洪水数达到68%。结果还表明,ANN具有相当大的河流预测潜力。

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