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Estimation of discharge in rivers by different artificial neural network algorithms: case of the Algerian Coastal basin

机译:用不同的人工神经网络算法估算河流流量-以阿尔及利亚沿海盆地为例

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摘要

River discharge estimation is fundamental for a large number of engineering applications. The rating curve of a hydrometric station, which permits the establishment of a relationship between water level h and flow rate Q at a given cross-section, is the methodology most frequently used for continuous river flow measurements. To properly develop rating curves, discharges must be measured at all representative stages, using at least 10 to 12 points covering the range of low to high flows (Kennedy 2001). In the Algerian rivers, the bed is unstable, it is constantly in motion and characterized by a strong rate of sediments transported (Salhi et al. 2013), so the stage-discharge relationship is re-callipered more than four times per year (ANRH, 2009). Whenever, the river cross-section changes, the old data and rating curve become useless and discharge calculations must wait until enough new data are collected to establish a new empirical rating. Consequently, long series of levels are frequently available without the corresponding discharge values. During the transition period when the change is occurring, the discharge is calculated from field measurements of velocity and cross-section gauging (WMO 2008). These require much time and effort and are usually not done in flood conditions because of the dangers and the difficulty in activating the measurement team in due time, which is very frequent in Algerian rivers. In these cases, water level-runoff models can be used as an alternative solution. This study compared three artificial neural networks (ANN) algorithms to calibrate a water level-runoff model from two hydrometrics stations in the Algerian Coastal basin. These algorithms, the Levenberg-Marquard (ANN_LM), scaled conjugate gradient (ANN_SCG), and resilient back-propagation (ANN_RP), were applied to the tangent sigmoid transfer function. The input vector consisted of level [H(t)], and antecedents levels [H(t-1), H(t-2) and H(t-3)]. The algorithms were trained and validated by cross-validation using the limnigrammes provided and the realized gauging.
机译:河流流量估算对于大量工程应用而言至关重要。水文测绘站的额定曲线允许在给定的横截面上建立水位h和流量Q之间的关系,是连续河流量测量中最常用的方法。为了正确建立额定曲线,必须在所有代表性阶段测量流量,至少要使用10至12个点,以涵盖低流量到高流量的范围(Kennedy 2001)。在阿尔及利亚的河流中,河床是不稳定的,河床不断运动,并以大量的沉积物为特征(Salhi等,2013),因此,每年要反复四次以上的流量关系(ANRH) ,2009)。每当河流横截面发生变化时,旧数据和等级曲线就变得无用,流量计算必须等到收集到足够的新数据以建立新的经验等级。因此,在没有相应的放电值的情况下,经常可以得到长系列的液位。在发生变化的过渡期间,根据速度和横截面测量的现场测量值来计算流量(WMO 2008)。这些操作需要大量的时间和精力,并且通常由于在紧急情况下存在危险和难以启动测量团队的困难而在洪水条件下无法完成,这在阿尔及利亚的河流中非常常见。在这些情况下,水位径流模型可以用作替代解决方案。这项研究比较了三种人工神经网络(ANN)算法,以校准阿尔及利亚沿海盆地两个水文测量站的水位径流模型。这些算法,Levenberg-Marquard(ANN_LM),缩放的共轭梯度(ANN_SCG)和弹性反向传播(ANN_RP),均已应用于切线S型传递函数。输入向量由级别[H(t)]和先例级别[H(t-1),H(t-2)和H(t-3)]组成。使用所提供的语法和已实现的测量通过交叉验证对算法进行了训练和验证。

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  • 会议地点 Paris(FR)
  • 作者单位

    Higher National School of Hydraulics, Blida, R.L GEE, Algeria,Environmental Sciences Department, University of Quebec at Trois-Rivieres, Quebec, Canada;

    Higher National School of Hydraulics, Blida, R.L GEE, Algeria;

    Environmental Sciences Department, University of Quebec at Trois-Rivieres, Quebec, Canada;

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