Simulation of Depth-Limited Breaking Waves in a 3D Fully Nonlinear Potential Flow Model

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Abstract

Extending an earlier two-dimensional (2D) implementation, a novel method is introduced for both detecting the onset of wave breaking and simulating the resulting energy dissipation in limited water depth, in a three-dimensional (3D) fully nonlinear potential flow (FNPF) model. Breaking onset is identified using a universal criterion, based on the ratio of the horizontal particle velocity at the crest to the crest phase velocity. The breaking-induced energy dissipation is based on the nondimensional breaking strength parameter and is implemented in the model as an absorbing surface pressure. The 3D-FNPF solves Laplace's equation using a higher-order boundary element method based on Green's second identity and marches the solution forward in time. The implementation of wave dissipation due to breaking is carried out in three steps: (i) a nondimensional breaking strength parameter is calculated based on a previous 2D unified depth-limited dissipation model; (ii) the instantaneous power to be dissipated is computed using this parameter and energy dissipation is modeled as a damping pressure specified in a region around the breaking crest; and (iii) the dissipation process of each breaking wave is terminated using a criterion calibrated through a comparison of the free surface elevation with experimental data from the literature. The new 3D model is experimentally validated for regular spilling and plunging breaking waves propagating over a 3D submerged bar and an elliptical shoal. Future work will extend this model to irregular 3D breaking waves.

Original languageEnglish
Article number04024007
JournalJournal of Waterway, Port, Coastal and Ocean Engineering
Volume150
Issue number4
DOIs
Publication statusPublished - 1 Jul 2024
Externally publishedYes

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