WANG Zhuolin,JIANG Junyang,YANG Gengchao,et al.An MPS algorithm accelerated by neural network on edge computing[J].Acta Scientiarum Naturalium Universitatis Sunyatseni,2023,62(05):67-77.
WANG Zhuolin,JIANG Junyang,YANG Gengchao,et al.An MPS algorithm accelerated by neural network on edge computing[J].Acta Scientiarum Naturalium Universitatis Sunyatseni,2023,62(05):67-77. DOI: 10.13471/j.cnki.acta.snus.2022A064.
An MPS algorithm accelerated by neural network on edge computing
As a meshless method, the moving particle semi-implicit(MPS) method forms the pressure Poisson equation by using the incompressibility of fluid, which not only obtain the accuracy of pressure but also bring a high cost of calculation. Therefore, it is not appropriate for MPS to solve large-scale fluid simulations. IA new algorithm NN-MPS is proposed to solve the above problems, which transforms the solution of the Poisson equation into a regression problem by using neural network. The NN-MPS algorithm realizes the quick solution of the Poisson equation by constructing the prediction model of flow field features and pressure at each step. In this work, the procedure of solving the pressure Poisson equation is further transported to Atlas 200 DK device for a faster speed of solving procedure. Results show that the acceleration method of MPS mentioned in this work has the characteristics of low cost, high speed, and low accuracy loss, and the solution speed has been improved. We also verified the feasibility of applying the edge computing device in the field of CFD.
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