Using Conservation Laws to Infer Deep Learning Model Accuracy of
Richtmyer-meshkov Instabilities
- URL: http://arxiv.org/abs/2208.11477v1
- Date: Tue, 19 Jul 2022 02:20:47 GMT
- Title: Using Conservation Laws to Infer Deep Learning Model Accuracy of
Richtmyer-meshkov Instabilities
- Authors: Charles F. Jekel, Dane M. Sterbentz, Sylvie Aubry, Youngsoo Choi,
Daniel A. White, Jonathan L. Belof
- Abstract summary: Richtmyer-Meshkov Instability (RMI) is a complicated phenomenon that occurs when a shockwave passes through a perturbed interface.
Deep learning was used to learn the temporal mapping of initial geometric perturbations to the full-field hydrodynamic solutions of density and velocity.
Predictions from the deep learning model appear to accurately capture temporal RMI formations.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Richtmyer-Meshkov Instability (RMI) is a complicated phenomenon that occurs
when a shockwave passes through a perturbed interface. Over a thousand
hydrodynamic simulations were performed to study the formation of RMI for a
parameterized high velocity impact. Deep learning was used to learn the
temporal mapping of initial geometric perturbations to the full-field
hydrodynamic solutions of density and velocity. The continuity equation was
used to include physical information into the loss function, however only
resulted in very minor improvements at the cost of additional training
complexity. Predictions from the deep learning model appear to accurately
capture temporal RMI formations for a variety of geometric conditions within
the domain. First principle physical laws were investigated to infer the
accuracy of the model's predictive capability. While the continuity equation
appeared to show no correlation with the accuracy of the model, conservation of
mass and momentum were weakly correlated with accuracy. Since conservation laws
can be quickly calculated from the deep learning model, they may be useful in
applications where a relative accuracy measure is needed.
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