ASSESSMENT OF A CFD-BASED MACHINE LEARNING APPROACH ON TURBULENT FLOW APPROXIMATION

被引:0
作者
Ziaei, Dorsa [1 ]
Athar, Seyyed Pooya Hekmati [2 ]
Goudarzi, Navid [3 ]
机构
[1] Univ Maryland Baltimore Cty, Coll Engn & Informat Technol, Dept Comp Sci & Elect Engn, Baltimore, MD 21250 USA
[2] Univ N Carolina, NADGOD Res Grp, Charlotte, NC 28223 USA
[3] Univ N Carolina, William States Lee Coll Engn, Charlotte, NC 28223 USA
来源
PROCEEDINGS OF THE ASME 13TH INTERNATIONAL CONFERENCE ON ENERGY SUSTAINABILITY, 2019 | 2019年
关键词
Deep Learning; Artificial Neural Network; Computational Fluid Dynamics; Turbulent Flow;
D O I
暂无
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Computational fluid dynamics (CFD) simulation is usually a computationally expensive, memory demanding, and time consuming iterative process. These drawbacks limit the use of CFD, especially when either spatiotemporal scales or geometry complexity increases. This paper presents the preliminary results from the assessment of an approximation model for predicting non-uniform steady turbulent flows in a 3D domain, utilizing deep learning (DL) algorithms. In particular, the artificial neural network (ANN) approach uses most important variables data from currently CFD simulation results to link multi-variable input spaces (e.g. input speed and direction, geometry configuration) with multi-variable output space (e.g. velocity magnitude, pressure gradient) to obtain an efficient and accurate approximation of the entire velocity field for given input flow field characteristics. The results demonstrated higher computational speed with a similar accuracy using DL algorithms versus CFD simulation. This integrated approach can provide immediate feedback for real-time design iterations for the entire computational domain at the early stages of design. Hence, designers and engineers can easily generate immense amounts of design alternatives without facing the time-consuming task of evaluation and selection.
引用
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页数:8
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