Machine Learning for Fluid Mechanics

被引:1876
作者
Brunton, Steven L. [1 ]
Noack, Bernd R. [2 ,3 ]
Koumoutsakos, Petros [4 ]
机构
[1] Univ Washington, Dept Mech Engn, Seattle, WA 98195 USA
[2] Univ Paris Saclay, LIMSI, CNRS, UPR 3251, F-91403 Orsay, France
[3] Tech Univ Berlin, Inst Stromungsmech & Tech Akust, D-10634 Berlin, Germany
[4] Swiss Fed Inst Technol, Computat Sci & Engn Lab, CH-8092 Zurich, Switzerland
来源
ANNUAL REVIEW OF FLUID MECHANICS, VOL 52 | 2020年 / 52卷
基金
瑞士国家科学基金会;
关键词
machine learning; data-driven modeling; optimization; control; ARTIFICIAL NEURAL-NETWORKS; EVOLUTIONARY ALGORITHMS; DATA-DRIVEN; SENSOR PLACEMENT; TURBULENCE; SYSTEMS; FLOWS; MODEL; OPTIMIZATION; IDENTIFICATION;
D O I
10.1146/annurev-fluid-010719-060214
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
The field of fluid mechanics is rapidly advancing, driven by unprecedented volumes of data from experiments, field measurements, and large-scale simulations at multiple spatiotemporal scales. Machine learning (ML) offers a wealth of techniques to extract information from data that can be translated into knowledge about the underlying fluid mechanics. Moreover, ML algorithms can augment domain knowledge and automate tasks related to flow control and optimization. This article presents an overview of past history, current developments, and emerging opportunities of ML for fluid mechanics. We outline fundamental ML methodologies and discuss their uses for understanding, modeling, optimizing, and controlling fluid flows. The strengths and limitations of these methods are addressed from the perspective of scientific inquiry that considers data as an inherent part of modeling, experiments, and simulations. ML provides a powerful information-processing framework that can augment, and possibly even transform, current lines of fluid mechanics research and industrial applications.
引用
收藏
页码:477 / 508
页数:32
相关论文
共 166 条
[71]  
Hastie T., 2009, The elements of statistical learning: data mining, inference, and prediction, V2
[72]  
Hochreiter S., 1997, Neural Computation, V9, P1735
[73]   NEURAL NETWORKS AND PHYSICAL SYSTEMS WITH EMERGENT COLLECTIVE COMPUTATIONAL ABILITIES [J].
HOPFIELD, JJ .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA-BIOLOGICAL SCIENCES, 1982, 79 (08) :2554-2558
[74]   Evaluating convective heat transfer coefficients using neural networks [J].
Jambunathan, K ;
Hartle, SL ;
AshforthFrost, S ;
Fontama, VN .
INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 1996, 39 (11) :2329-2332
[75]   Cluster-based reduced-order modelling of a mixing layer [J].
Kaiser, Eurika ;
Noack, Bernd R. ;
Cordier, Laurent ;
Spohn, Andreas ;
Segond, Marc ;
Abel, Markus ;
Daviller, Guillaume ;
Osth, Jan ;
Krajnovic, Sinisa ;
Niven, Robert K. .
JOURNAL OF FLUID MECHANICS, 2014, 754 :365-414
[76]   Learning probability distributions in continuous evolutionary algorithms - A comparative review [J].
Kern S. ;
Müller S.D. ;
Hansen N. ;
Büche D. ;
Ocenasek J. ;
Koumoutsakos P. .
Natural Computing, 2004, 3 (1) :77-112
[77]  
Knaak M, 1997, 1997 IEEE INTERNATIONAL CONFERENCE ON NEURAL NETWORKS, VOLS 1-4, P48, DOI 10.1109/ICNN.1997.611633
[78]  
Kohonen T., 1995, Self-Organizing Maps, V30
[79]  
Koza J.R., 1992, Genetic Programming IV: Routine Human-Competitive Machine Intelligence
[80]   A new neural network for particle-tracking velocimetry [J].
Labonté, G .
EXPERIMENTS IN FLUIDS, 1999, 26 (04) :340-346