Title of article :
Simulation of hydraulic jump length on sloping coarse floors adopting extreme learning machine
Author/Authors :
Azimi, Amir Hosein Department of Water Engineering - faculty of Agriculture - Islamic Azad University Kermanshah Branch, Kermanshah, Iran , Shabanlou, Saeid Department of Water Engineering - faculty of Agriculture - Islamic Azad University Kermanshah Branch, Kermanshah, Iran , Yaghoubi, Behrouz Department of Water Engineering - faculty of Agriculture - Islamic Azad University Kermanshah Branch, Kermanshah, Iran
Abstract :
In this paper, the hydraulic jump length on a slope rough floor is simulated through the extreme
learning machine (ELM). Then, the parameters affecting the hydraulic jump on the slope rough
bed are detected. After that, five different ELM model are developed so as to determine the
influenced factor. Next, the results obtained from different ELM models are analyzed. The
comparison of the results with the experimental data proves the acceptable accuracy of the
mentioned numerical models. Regarding the results from the numerical method, the superior
ELM model estimates the hydraulic jump length in terms of the flow Froude number, the ratio
of bed roughness, the ratio of sequent depths and bed slope. The values of the root mean
square error (RMSE), mean absolute percent error (MAPE), scatter index (SI) and correlation
coefficient (R) for the superior model are respectively obtained 0.657, 3.507, 0.052 and 0.985.
Based on the simulation, the flow Froude number at upstream is introduced as the most
effective parameter in predicting the jump length on the sloping rough floor.
Keywords :
Extreme learning machine , Hydraulic jump length , Rough floor , Sloping flume , Sensitivity analysis
Journal title :
Journal of Applied Research in Water and Wastewater (JARWW)