Modelling hydraulic jumps with artificial neural networks

被引:0
|
作者
Omid, MH [1 ]
Omid, M [1 ]
Varaki, ME [1 ]
机构
[1] Univ Tehran, Tehran, Iran
关键词
hydraulics & hydrodynamics; mathematical modelling; waterways and canals;
D O I
暂无
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
An artificial neural network (ANN) approach was adapted to model sequent depth and jump length, both important parameters in the design of stilling basins with hydraulic jumps. A total of 611 experimental data on sequent depth and jump length with gradually expanding jumps having rectangular and trapezoidal sections and for a wide range of divergent angles and side wall slopes were collected. In developing the ANN models, 16 configurations, each with different numbers of hidden layers and/or neurons, were evaluated. The optimal models were capable of predicting sequent depth and jump length for a wide range of conditions with a mean square error (MSE) of 10%. In each case, the configuration resulting in the highest coefficient of determination, R-2, value was selected as the optimal model. For the rectangular section, the simplest ANN model, which had two hidden layers and four neurons, i.e. 4-4-4-1 configuration, predicted jump length and sequent depth values with R-2 = 0-94, MSE = 0.048 and R-2 = 0.92, IMISE = 0.0192, respectively. In the case of a trapezoidal section, the simplest ANN model for jump length had a 5-13-1 configuration with 13 neurons in the hidden layer (R-2 = 0-94, IMISE = 0.0213); for sequent depth the model had a 5-8-8-1 configuration with eight neurons in each of the two hidden layers (R-2 = 0.80, MSE = 0.005).
引用
收藏
页码:65 / 70
页数:6
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