Differentiable physics-enabled closure modeling for Burgers' turbulence
- URL: http://arxiv.org/abs/2209.11614v1
- Date: Fri, 23 Sep 2022 14:38:01 GMT
- Title: Differentiable physics-enabled closure modeling for Burgers' turbulence
- Authors: Varun Shankar, Vedant Puri, Ramesh Balakrishnan, Romit Maulik,
Venkatasubramanian Viswanathan
- Abstract summary: We discuss an approach using the differentiable physics paradigm that combines known physics with machine learning to develop closure models for turbulence problems.
We train a series of models that incorporate varying degrees of physical assumptions on an a posteriori loss function to test the efficacy of models.
We find that constraining models with inductive biases in the form of partial differential equations that contain known physics or existing closure approaches produces highly data-efficient, accurate, and generalizable models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Data-driven turbulence modeling is experiencing a surge in interest following
algorithmic and hardware developments in the data sciences. We discuss an
approach using the differentiable physics paradigm that combines known physics
with machine learning to develop closure models for Burgers' turbulence. We
consider the 1D Burgers system as a prototypical test problem for modeling the
unresolved terms in advection-dominated turbulence problems. We train a series
of models that incorporate varying degrees of physical assumptions on an a
posteriori loss function to test the efficacy of models across a range of
system parameters, including viscosity, time, and grid resolution. We find that
constraining models with inductive biases in the form of partial differential
equations that contain known physics or existing closure approaches produces
highly data-efficient, accurate, and generalizable models, outperforming
state-of-the-art baselines. Addition of structure in the form of physics
information also brings a level of interpretability to the models, potentially
offering a stepping stone to the future of closure modeling.
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