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Studying the seepage phenomena under a concrete dam using SEEP/W and Artificial Neural Network models.

机译:使用SEEP / W和人工神经网络模型在混凝土坝下研究渗流现象。

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Seepage under hydraulic structures is considered to be a dangerous phenomenon which may cause the collapse of the structure over time if neglected. In this research, a SEEP/W model was developed to find the seepage rate and exit gradient under a concrete dam provided with two sheet piles. The independent variables were head difference; coefficient of soil permeability; and the spacing, lengths, and inclined angles of the sheet piles. The model was run for three different values of each independent variable. The results obtained from SEEP/W model were then used to create two neural artificial network (ANN) models (A and B) in which the output variables were the seepage rate (model A) and exit gradient (model B). The most appropriate structure, which gave minimum relative errors, was (7 3 1) nodes for both models. The results of the ANN models indicated that the variable with the most effect on seepage rate was the coefficient of soil permeability, with an importance ratio of about 76%, followed by the difference in the head (8%), the distance between piles (5.5%), length of downstream pile (5%), length of upstream pile (4%), and downstream and upstream inclined angles of the sheet piles, with ratios of about 1% and 0.5%. In terms of exit gradient, the most influential factor was the distance between piles at 35%, followed by the downstream inclination angle, length of downstream pile, head difference, length of upstream pile, inclined angle of upstream pile, and soil permeability with importance of about 23%, 19%, 14%, 7.5%, 1% and 0.5%, respectively. These results are in agreement with an analysis of the SEEP/W model.
机译:液压结构下的渗流被认为是危险现象,如果被忽略,可能会导致结构塌陷。在该研究中,开发了渗透/型型号,以在设置有两个纸张桩的混凝土坝下找到渗流速率和退出梯度。独立变量是头部差异;土壤渗透系数;和板桩的间隔,长度和倾斜角度。该模型运行了每个独立变量的三个不同值。然后使用从SEEP / W型号获得的结果来创建两个神经人工网络(AND)模型(A和B),其中输出变量是渗流速率(模型A)和出口梯度(型号B)。最合适的结构,其具有最小相对误差,是两个模型的(7 3 1)节点。 ANN模型的结果表明,对渗流速率最大的变量是土壤渗透系数,重要性比约76%,其次是头部(8%)的差异,桩之间的距离( 5.5%),下游桩长度(5%),上游桩长度(4%),下游和下游和上游倾斜角度,比率约为1%和0.5%。在出口梯度方面,最具影响力的因素是桩之间的距离为35%,然后是下游倾斜角度,下游桩长度,头部差异,上游桩的长度,上游桩的倾斜角度,以及具有重要性的土壤渗透率分别约为23%,19%,14%,7.5%,1%和0.5%。这些结果与渗透/ W型号的分析一致。

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