Application of Artificial intelligence in Computational fluid dynamics
DOI:
https://doi.org/10.54097/fcis.v1i3.2072Keywords:
Artificial intelligence, Computational Fluid Dynamics, Mesh generation, Turbulent flow predictionAbstract
With the continuous development of artificial intelligence (AI) and computer, the further improvement of computational fluid dynamics (CFD) algorithm and software, artificial intelligence technology has shown its advantages in many fields.AI is becoming increasingly common in engineering applications and is significant in reducing human labor. The purpose of this paper is to summarize the AI technology in the field of CFD, the application of artificial intelligence can through machine learning geometry model parameters, the grid generation technique, the turbulence model calculation, reduce manual intervention, improve the meshing degree, improve the predictive accuracy, rapid turbulence data visualization analysis, bring so much convenient for computational fluid dynamics.
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