Physics-informed neural networks for rarefied-gas dynamics: Thermal creep flow in the Bhatnagar-Gross-Krook approximation
Affiliation
Department of Systems and Industrial Engineering, University of ArizonaDepartment of Aerospace and Mechanical Engineering, University of Arizona
Issue Date
2021
Metadata
Show full item recordPublisher
American Institute of Physics Inc.Citation
De Florio, M., Schiassi, E., Ganapol, B. D., & Furfaro, R. (2021). Physics-informed neural networks for rarefied-gas dynamics: Thermal creep flow in the Bhatnagar-Gross-Krook approximation. Physics of Fluids, 33(4).Journal
Physics of FluidsRights
Copyright © 2021 Author(s). Published under license by AIP Publishing.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
This work aims at accurately solve a thermal creep flow in a plane channel problem, as a class of rarefied-gas dynamics problems, using Physics-Informed Neural Networks (PINNs). We develop a particular PINN framework where the solution of the problem is represented by the Constrained Expressions (CE) prescribed by the recently introduced Theory of Functional Connections (TFC). CEs are represented by a sum of a free-function and a functional (e.g., function of functions) that analytically satisfies the problem constraints regardless to the choice of the free-function. The latter is represented by a shallow Neural Network (NN). Here, the resulting PINN-TFC approach is employed to solve the Boltzmann equation in the Bhatnagar-Gross-Krook approximation modeling the Thermal Creep Flow in a plane channel. We test three different types of shallow NNs, i.e., standard shallow NN, Chebyshev NN (ChNN), and Legendre NN (LeNN). For all the three cases the unknown solutions are computed via the extreme learning machine algorithm. We show that with all these networks we can achieve accurate solutions with a fast training time. In particular, with ChNN and LeNN we are able to match all the available benchmarks. © 2021 Author(s).Note
12 month embargo; published online: 21 April 2021ISSN
1070-6631Version
Final published versionae974a485f413a2113503eed53cd6c53
10.1063/5.0046181
