GPU parallel computing based on PF-LBM method for simulating dendrites growth under natural convection conditions

Author:

Li Tianyu1ORCID,Zhu Changsheng1ORCID,Gao Zihao1,Lei Peng2,Liu Shuo1

Affiliation:

1. College of Computer and Communication, Lanzhou University of Technology 1 , Lanzhou, 730050 Gansu, China

2. Network & Information Center, Lanzhou University of Technology 2 , Lanzhou 730050, China

Abstract

This study introduces a GPU-based parallel computing approach that combines the phase-field model (PF) and the lattice Boltzmann model (LBM). By establishing a coupled multiphase field model incorporating physical external fields such as flow field, temperature field, and solute field, the research simulates the growth of single grains and multiple grains under the influence of natural convection. The variations in dendritic morphology, flow field, and solute field during dendritic solidification processes are observed. Initially, the study analyzes the morphology of equiaxed dendrites and the growth patterns of primary dendrites arms under natural convection conditions. The evolution of equiaxed dendrites in single grains and multiple grains under various conditions is investigated. Furthermore, the study explores the impact of different anisotropy strengths on the growth of single grains and multiple grains under natural convection. Notably, a distinct “necking” phenomenon is observed when the anisotropy strength of a single grain is 0.05. In the case of multiple grains, where competition between dendrites is present in addition to the influence of natural convection, a pronounced “necking” phenomenon is evident at an anisotropy strength of 0.03. Moreover, OpenCL parallel technology is designed on the GPU platform to accelerate the solution of the model. The parallelization of the phase-field model coupled with the LBM model on the GPU demonstrates a clear advantage. The parallel computation based on GPU not only exhibits absolute superiority but also shows more significant acceleration effects as the computational domain increases.

Funder

National Natural Science Foundation of China

Publisher

AIP Publishing

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