A Neural Particle Method with Interface Tracking and Adaptive Particle Refinement for Free Surface Flows

被引:0
作者
Pai, Pei-Hsin [1 ]
Kan, Heng-Chuan [2 ]
Wong, Hock-Kiet [1 ]
Tai, Yih-Chin [1 ]
机构
[1] Natl Cheng Kung Univ, Dept Hydraul & Ocean Engn, Tainan, Taiwan
[2] Natl Ctr High Performance Comp, Natl Appl Res Labs, Tainan, Taiwan
关键词
Neural particle method (NPM); Lagrangian approach; adaptive particle refinement; interface tracking; physics-informed neural networks (PINNs); DEEP LEARNING FRAMEWORK; DAM-BREAK; SIMULATION; NETWORKS; WAVE; LOADS; SPH;
D O I
10.4208/cicp.OA-2023-0235
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
This paper is devoted to a new neural particle method (NPM) based on ing interface tracking techniques and machine learning (ML) modeling, the new NPM approach with interface tracking and adaptive particle refinement (NPM-LA) is suggested. This method encompasses properties of tracking the interface particles and ensuring the preservation of the designated distribution pattern for interior fluid (computational) particles. The determination of the corresponding physical quantities at these particles is accomplished through the process of inference, a distinctive feature facilitated by ML. The proposed NPM-LA effectively provides solutions for both appropriately tracking the morphology of complex flow surfaces and enhancing the accuracy by dynamically redistributing particles into desired patterns within the computational domain. Two testing cases (the 2D Poiseuille flow problem and a rotating square patch of inviscid fluid) are adopted to examine the performance of the proposed NPM-LA method. The applications to experiments of dam break and wave breaking problems are explored for demonstrating the capability of capturing the complex deforming flow surface.
引用
收藏
页码:1021 / 1052
页数:32
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