Author/Authors :
Haghiabi Amir Hamzeh نويسنده Associate professor of water Engineering, Lorestan University, KhoramAbad, Iran.
Abstract :
In this paper, modeling the scour downstream of a
ip bucket of spillways
was considered using empirical formulas, soft computing techniques such as multilayer
perceptron (MLP) neural network, and Multivariate Adaptive Regression Splines (MARS).
For this purpose, 95 data sets were collected with regard to the most aective parameters on
the scouring phenomena at downstream of spillways. During the MLP model development,
it was found that the two transfer functions, such as log-sigmoid and radial basis, had very
suitable performances for predicting the desired scouring phenomena. The results of MARS
model showed that this model with coecient of determination 0.99 and 0.91 during the
development and testing stages, respectively, had suitable performance for modeling the
scouring depth at downstream of
ip bucket structure. The results of gamma test and
MARS model indicated that q=(gd3
w), R=dw, and H=dw were the most aective parameters
on the scouring phenomena.