Novel DNNs for Stiff ODEs with Applications to Chemically Reacting Flows
- URL: http://arxiv.org/abs/2104.01914v1
- Date: Thu, 1 Apr 2021 22:54:22 GMT
- Title: Novel DNNs for Stiff ODEs with Applications to Chemically Reacting Flows
- Authors: Thomas S. Brown, Harbir Antil, Rainald L\"ohner, Fumiya Togashi,
Deepanshu Verma
- Abstract summary: Chemically reacting flows are common in engineering, such as hypersonic flow, combustion, explosions, manufacturing processes and environmental assessments.
For combustion, the number of reactions can be significant (over 100) and due to the very large CPU requirements a large number of flow and combustion problems are presently beyond the capabilities of even the largest supercomputers.
Motivated by this, novel Deep Neural Networks (DNNs) are introduced to approximate stiff ODEs.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Chemically reacting flows are common in engineering, such as hypersonic flow,
combustion, explosions, manufacturing processes and environmental assessments.
For combustion, the number of reactions can be significant (over 100) and due
to the very large CPU requirements of chemical reactions (over 99%) a large
number of flow and combustion problems are presently beyond the capabilities of
even the largest supercomputers. Motivated by this, novel Deep Neural Networks
(DNNs) are introduced to approximate stiff ODEs. Two approaches are compared,
i.e., either learn the solution or the derivative of the solution to these
ODEs. These DNNs are applied to multiple species and reactions common in
chemically reacting flows. Experimental results show that it is helpful to
account for the physical properties of species while designing DNNs. The
proposed approach is shown to generalize well.
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