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首页> 外文期刊>Computers & Fluids >A neural network approach for prediction of critical submergence of an intake in still water and open channel flow for permeable and impermeable bottom
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A neural network approach for prediction of critical submergence of an intake in still water and open channel flow for permeable and impermeable bottom

机译:一种神经网络方法,用于预测可渗透和不可渗透底部的静水和明渠流量临界进水口

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摘要

Free air-core vortex occurring at a water-intake pipe is an important problem encountered in hydraulic engineering. When the submergence of the intake pipe is not sufficient, air enters the pipe and reduction in discharge occurs. The most common solution for avoiding air entrainment is to provide sufficient submergence to the intake. In this study, the critical submergence of intakes is investigated in still water and open channel flow for permeable and impermeable bottom. It is seen that the permeability of the bottom is effective on the critical submergence. The main aim of this study is to develop a suitable model for the critical submergence for intake pipe. Therefore, an artificial neural network (ANN) and multi-linear regression models are used. Results of these experimental studies are compared with those obtained by the ANN and MLR approaches. The ANN model results are found to be in good agreement with the experimental results.
机译:进水管处出现的空芯涡流是水利工程中遇到的重要问题。当进气管的浸没不足时,空气会进入进气管,并导致排气量减少。避免空气夹带的最常见解决方案是使进气口充分浸入水中。在这项研究中,对渗透性和非渗透性底部的静止水和明渠流量中的进水临界浸没进行了研究。可以看出,底部的渗透性对临界浸没有效。这项研究的主要目的是为进气管的严重浸没开发一个合适的模型。因此,使用了人工神经网络(ANN)和多线性回归模型。将这些实验研究的结果与通过ANN和MLR方法获得的结果进行比较。人工神经网络模型的结果与实验结果吻合良好。

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