29 / 2025-03-31 15:00:09
Numerical study of violent wave-structure interaction by a hybrid method combining GNN with ISPH
ISPH,violent wave-structure interaction,Graph neural network (GNN),hybrid method,PPE,Pressure prediction
摘要录用
Ningbo Zhang / Harbin Engineering University
Baoyu Ni / Harbin Engineering University
Yanzhuo Xue / Harbin Engineering University
Qigang Wu / Harbin Engineering University
Guangyu Yuan / Harbin Engineering University
The study of violent wave-structure interaction (WSI) is crucial for the safety and operation of offshore and marine structures. As the mesh-free approach, the incompressible Smoothed Particle Hydrodynamics (ISPH) method is emerging as a potential tool for simulating the WSI problems [1]. The pressure in the conventional ISPH method is obtained by solving the pressure Poisson’s equation (PPE), which is the most time-consuming part. Recently, the machine learning (ML) techniques have been used in the fluid dynamics. In this study, the graph neural network (GNN) is combined with ISPH (ISPH_GNN) [2] and used to predict the fluid pressure instead of solving the PPE directly. The hybrid ISPH_GNN method with one trained GNN model based on training data generating from relatively simple sloshing and dam-breaking cases without any structure will be extended to simulate different violent WSI problems. It will be shown that the ISPH_GNN method gives satisfactory results when compared with experimental data, indicating its good generalization properties. In addition, this method will be demonstrated to requires much less computation time than the conventional ISPH for estimating pressure large-scale violent WSI simulations involving a large number of particles.

 
重要日期
  • 会议日期

    07月03日

    2025

    07月06日

    2025

  • 06月25日 2025

    初稿截稿日期

主办单位
Harbin Engineering University, China
承办单位
Harbin Engineering University, China
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