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Prediction of pressure fluctuations on sloping stilling basins

机译:坡度消沉盆地压力波动的预测

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Various types of hydraulic jump occurring on horizontal and sloping channels have been analyzed experimentally, theoretically, and numerically and the results are available in the literature. In this study, artificial neural network models were developed to simulate the mean pressure fluctuations beneath a hydraulic jump occurring on sloping stilling basins. Multilayers feed a forward neural network with a back-propagation learning algorithm to model the pressure fluctuations beneath such a type of hydraulic jump (B-jump). An explicit formula that predicts the mean pressure fluctuation in terms of the characteristics that contribute most to the hydraulic jump occurring on the sloping basins is presented. The proposed neural network models are compared with linear and nonlinear regression models that were developed using considered physical parameters. The results of the neural network modelling are found to be superior to the regression models and are in good agreement with the experimental results due to relatively small values of error (mean absolute percentage error).
机译:已经通过实验,理论和数值对在水平和倾斜通道上发生的各种类型的水力跃迁进行了分析,其结果可从文献中获得。在这项研究中,开发了人工神经网络模型来模拟在倾斜静水盆地上发生的水力跃变下的平均压力波动。多层为前向神经网络提供反向传播学习算法,以对这种类型的液压跳跃(B跳)下方的压力波动进行建模。提出了一个明确的公式,该公式根据对倾斜盆地中出现的水力跃变有最大贡献的特性来预测平均压力波动。将拟议的神经网络模型与使用考虑的物理参数开发的线性和非线性回归模型进行比较。发现神经网络建模的结果优于回归模型,并且由于相对较小的误差值(平均绝对百分比误差)而与实验结果非常吻合。

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