TY - JOUR
T1 - Learned turbulence modelling with differentiable fluid solvers
T2 - physics-based loss functions and optimisation horizons
AU - List, Björn
AU - Chen, Li Wei
AU - Thuerey, Nils
N1 - Publisher Copyright:
© The Author(s), 2022.
PY - 2022/10/25
Y1 - 2022/10/25
N2 - In this paper, we train turbulence models based on convolutional neural networks. These learned turbulence models improve under-resolved low-resolution solutions to the incompressible Navier-Stokes equations at simulation time. Our study involves the development of a differentiable numerical solver that supports the propagation of optimisation gradients through multiple solver steps. The significance of this property is demonstrated by the superior stability and accuracy of those models that unroll more solver steps during training. Furthermore, we introduce loss terms based on turbulence physics that further improve the model accuracy. This approach is applied to three two-dimensional turbulence flow scenarios, a homogeneous decaying turbulence case, a temporally evolving mixing layer and a spatially evolving mixing layer. Our models achieve significant improvements of long-term a posteriori statistics when compared with no-model simulations, without requiring these statistics to be directly included in the learning targets. At inference time, our proposed method also gains substantial performance improvements over similarly accurate, purely numerical methods.
AB - In this paper, we train turbulence models based on convolutional neural networks. These learned turbulence models improve under-resolved low-resolution solutions to the incompressible Navier-Stokes equations at simulation time. Our study involves the development of a differentiable numerical solver that supports the propagation of optimisation gradients through multiple solver steps. The significance of this property is demonstrated by the superior stability and accuracy of those models that unroll more solver steps during training. Furthermore, we introduce loss terms based on turbulence physics that further improve the model accuracy. This approach is applied to three two-dimensional turbulence flow scenarios, a homogeneous decaying turbulence case, a temporally evolving mixing layer and a spatially evolving mixing layer. Our models achieve significant improvements of long-term a posteriori statistics when compared with no-model simulations, without requiring these statistics to be directly included in the learning targets. At inference time, our proposed method also gains substantial performance improvements over similarly accurate, purely numerical methods.
KW - machine learning
KW - turbulence modelling
UR - http://www.scopus.com/inward/record.url?scp=85139563658&partnerID=8YFLogxK
U2 - 10.1017/jfm.2022.738
DO - 10.1017/jfm.2022.738
M3 - Article
AN - SCOPUS:85139563658
SN - 0022-1120
VL - 949
JO - Journal of Fluid Mechanics
JF - Journal of Fluid Mechanics
M1 - A25
ER -