Forecasting small-scale dynamics of fluid turbulence using deep neural networks

被引:29
作者
Buaria, Dhawal [1 ,2 ]
Sreenivasan, Katepalli R. [1 ,3 ,4 ]
机构
[1] NYU, Tandon Sch Engn, New York, NY 11201 USA
[2] Max Planck Inst Dynam & Selforg, Lab Fluid Phys Pattern Format & Biocomplex, D-37077 Gottingen, Germany
[3] NYU, Dept Phys, New York, NY 10012 USA
[4] NYU, Courant Inst Math Sci, New York, NY 10012 USA
关键词
fluid dynamics; turbulence; deep learning; intermittency; extreme events; DIRECT NUMERICAL-SIMULATION; REYNOLDS-NUMBER DEPENDENCE; ISOTROPIC TURBULENCE; STRAIN RATE; GRADIENT; PHENOMENOLOGY; VORTICITY; ALGORITHM; ALIGNMENT;
D O I
10.1073/pnas.2305765120
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Turbulence in fluid flows is characterized by a wide range of interacting scales. Since the scale range increases as some power of the flow Reynolds number, a faithful simulation of the entire scale range is prohibitively expensive at high Reynolds numbers. The most expensive aspect concerns the small-scale motions; thus, major emphasis is placed on understanding and modeling them, taking advantage of their putative universality. In this work, using physics-informed deep learning methods, we present a modeling framework to capture and predict the small-scale dynamics of turbulence, via the velocity gradient tensor. The model is based on obtaining functional closures for the pressure Hessian and viscous Laplacian contributions as functions of velocity gradient tensor. This task is accomplished using deep neural networks that are consistent with physical constraints and explicitly incorporate Reynolds number dependence to account for small-scale intermittency. We then utilize a massive direct numerical simulation database, spanning two orders of magnitude in the large-scale Reynolds number, for training and validation. The model learns from low to moderate Reynolds numbers and successfully predicts velocity gradient statistics at both seen and higher (unseen) Reynolds numbers. The success of our present approach demonstrates the viability of deep learning over traditional modeling approaches in capturing and predicting small-scale features of turbulence.
引用
收藏
页数:10
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