A Survey on the Application of Machine Learning in Turbulent Flow Simulations

被引:13
作者
Majchrzak, Maciej [1 ]
Marciniak-Lukasiak, Katarzyna [2 ]
Lukasiak, Piotr [1 ]
机构
[1] Poznan Univ Tech, Inst Comp Sci, Fac Comp & Telecommun, Piotrowo 2, PL-60965 Poznan, Poland
[2] Warsaw Univ Life Sci WULS SGGW, Inst Food Sci, Fac Food Assessment & Technol, Nowoursynowska 159c, PL-02776 Warsaw, Poland
关键词
machine learning; computational fluid dynamics; turbulence; turbulence modeling; MODEL; DECONVOLUTION; FLUID; LAYER;
D O I
10.3390/en16041755
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow-such as the Navier-Stokes equations-were developed, the idea of using them for flow simulations emerged. However, it was soon discovered that the computational requirements of problems such as atmospheric phenomena and engineering calculations made hand computation impractical. The dawn of the computer age also marked the beginning of computational fluid mechanics and their subsequent popularization made computational fluid dynamics one of the common tools used in science and engineering. From the beginning, however, the method has faced a trade-off between accuracy and computational requirements. The purpose of this work is to examine how the results of recent advances in machine learning can be applied to further develop the seemingly plateaued method. Examples of applying this method to improve various types of computational flow simulations, both by increasing the accuracy of the results obtained and reducing calculation times, have been reviewed in the paper as well as the effectiveness of the methods presented, the chances of their acceptance by industry, including possible obstacles, and potential directions for their development. One can observe an evolution of solutions from simple determination of closure coefficients through to more advanced attempts to use machine learning as an alternative to the classical methods of solving differential equations on which computational fluid dynamics is based up to turbulence models built solely from neural networks. A continuation of these three trends may lead to at least a partial replacement of Navier-Stokes-based computational fluid dynamics by machine-learning-based solutions.
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页数:20
相关论文
共 94 条
[1]  
Baez J.C., 2006, OPEN QUESTIONS PHYS
[2]  
BAKER TJ, 1991, AIAA 10TH COMPUTATIONAL FLUID DYNAMICS CONFERENCE, P714
[3]   Learning data-driven discretizations for partial differential equations [J].
Bar-Sinai, Yohai ;
Hoyer, Stephan ;
Hickey, Jason ;
Brenner, Michael P. .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2019, 116 (31) :15344-15349
[4]  
Bardina J., 1983, Tech. Rep. Report no. TF-19
[5]   Deep neural networks for data-driven LES closure models [J].
Beck, Andrea ;
Flad, David ;
Munz, Claus-Dieter .
JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 398
[6]   Formulating turbulence closures using sparse regression with embedded form invariance [J].
Beetham, S. ;
Capecelatro, J. .
PHYSICAL REVIEW FLUIDS, 2020, 5 (08)
[7]  
Ben Gal I Bayesian Networks, 2007, ENCY STAT QUALITY RE
[8]  
Benard H., 1900, REV GEN SCI PURE APP, V11, P1261, DOI DOI 10.1051/JPHYSTAP:019000090051300
[9]   GeVaDSs - decision support system for novel Genetic Vaccine development process [J].
Blazewicz, Jacek ;
Borowski, Marcin ;
Chaara, Wahiba ;
Kedziora, Pawel ;
Klatzmann, David ;
Lukasiak, Piotr ;
Six, Adrien ;
Wojciechowski, Pawel .
BMC BIOINFORMATICS, 2012, 13
[10]  
Blazewicz J, 2007, CONTROL CYBERN, V36, P183