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首页> 外文期刊>Canadian Journal of Civil Engineering >Discharge estimation in converging and diverging compound open channels by using adaptive neuro-fuzzy inference system
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Discharge estimation in converging and diverging compound open channels by using adaptive neuro-fuzzy inference system

机译:通过使用自适应神经模糊推理系统会聚和发化复合通道的放电估计

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The computation of total flow in a flooded river is very crucial work in designing economical flood defense schemes and drainage systems. Further, under non-uniform flow conditions like in converging and diverging compound channel, the traditional methods provide poor results with high errors. The analytical methods require the system of nonlinear equations to be solved, which is very complex. So, mathematical models that prompt in taking care of a complex system of problems are solved here through an artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS). By utilizing ANN and ANFIS, an attempt is made to predict the discharge in converging and diverging compound channels. In the analysis, the most influencing dimensionless parameters such as friction factor ratio, area ratio, hydraulic radius ratio, bed slope, width ratio, relative flow depth, angle of converging or diverging, relative longitudinal distance, and flow aspect ratio are taken into consideration for computation of discharge. Gamma test and M-test have been performed to achieve the best combinations of input parameters and training length respectively. The significant input parameters that influence the discharge are found to be friction factor ratio, hydraulic radius ratio, relative flow depth, and bed slope. A suitable performance is achieved by the ANFIS model as compared to ANN model with a high coefficient of determination of 0.86 and low root mean square error of 0.005 in predicting the discharge of non-prismatic compound channels taken under consideration.
机译:洪水河流总流量计算是设计经济防洪方案和排水系统的重要工作。此外,在非均匀流动条件下,如在合流和分流复合通道中,传统方法的结果较差,误差较大。分析方法要求求解非线性方程组,这是非常复杂的。因此,这里通过人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)来解决促进处理复杂问题系统的数学模型。利用人工神经网络(ANN)和人工神经网络(ANFIS)对合流和分流复合渠道的流量进行了预测。在分析中,流量计算考虑了影响最大的无量纲参数,如摩擦系数比、面积比、水力半径比、河床坡度、宽度比、相对水流深度、会聚或发散角、相对纵向距离和水流纵横比。Gamma检验和M检验分别用于实现输入参数和训练长度的最佳组合。影响流量的重要输入参数为摩擦系数比、水力半径比、相对流深和河床坡度。与人工神经网络模型相比,ANFIS模型在预测所考虑的非棱柱形复合渠道流量时具有较高的确定系数0.86和较低的均方根误差0.005,取得了合适的性能。

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