Litcius/Paper detail

Simulation and prediction of hydraulic jump characteristics over expanding rough beds using FLOW-3D and soft computing techniques

Morteza Ziari, Hojat Karami, Ali Ostadi, Hamidreza Ghazvinian

2025Journal of Hydroinformatics10 citationsDOIOpen Access PDF

Abstract

ABSTRACT In this study, hydraulic jumps over expanding beds with artificial roughness were simulated using FLOW-3D across Froude numbers ranging from 4.34 to 9.37. The simulations were conducted on both smooth and rough beds, with roughness in the form of half-spheres of 3, 4, and 5 cm in diameter, and divergence angles of 7°, 14°, and 90°. The results showed that for maximum discharge in a sudden divergent channel, a rough bed with 5-cm diameter elements reduced flow depth by 19.77% compared to a smooth bed. Additionally, in all scenarios, the ratio of y2/y1 increased as the Froude number increased. In the second phase, soft computing models – such as Linear Regression, Support Vector Regression, Decision Tree, Random Forest, Bagging, Gradient Boosting, MLP, and Stacking – were employed to model the relationships between input parameters (Fr1, θ, D/b1, and Kb) and outputs (y2/y1 and Lj/y1). The R2 coefficient value in the training stage of the Stacking model for the parameter (y2/y1) was 0.978 and in the testing stage it was 0.988, and for the parameter (Lj/y1) in the training and testing stages this coefficient was estimated to be 0.971 and 0.987, respectively.

Topics & Concepts

JumpSoft computingHydraulic jumpFlow (mathematics)GeologyMechanicsComputer scienceArtificial intelligenceArtificial neural networkPhysicsQuantum mechanicsHydraulic flow and structuresHydrology and Sediment Transport ProcessesDam Engineering and Safety