Physics-based loss and machine learning approach in application to non-Newtonian fluids flow modeling

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningfagfællebedømt

The variational approach of finding the extremum of an objective functional is an alternative approach to the solution of partial differential equations in mechanics of continua. The great challenge in the calculus of variations direct methods is to find a set of functions that will be able to approximate the solution accurately enough. Artificial neural networks are a powerful tool for approximation, and the physics-based functional can be the natural loss for a machine learning method. In this paper, we focus on the loss that may take non-linear fluid properties and mass forces into account. We modified the energy-based variational principle and determined the constraints on its unknown functions that implement boundary conditions. We explored artificial neural networks as an option for loss minimization and the approximation of the unknown functions. We compared the obtained results with the known solutions. The proposed method allows modeling non-Newtonian fluids flow including blood, synthetic oils, paints, plastic, bulk materials, and even rheomagnetic fluids. The fluids flow velocity approximation error was up to 4% in comparison with the analytical and numerical solutions.

OriginalsprogEngelsk
Titel2022 IEEE Congress on Evolutionary Computation, CEC 2022 - Conference Proceedings
Antal sider8
ForlagIEEE
Publikationsdato2022
ISBN (Elektronisk)9781665467087
DOI
StatusUdgivet - 2022
Begivenhed2022 IEEE Congress on Evolutionary Computation, CEC 2022 - Padua, Italien
Varighed: 18 jul. 202223 jul. 2022

Konference

Konference2022 IEEE Congress on Evolutionary Computation, CEC 2022
LandItalien
ByPadua
Periode18/07/202223/07/2022

Bibliografisk note

Funding Information:
This research has been financially supported by The Analytical Center for the Government of the Russian Federation (Agreement No. 70-2021-00143 dd. 01.11.2021, IGK 000000D730321P5Q0002).

Publisher Copyright:
© 2022 IEEE.

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