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      Learning Physics-Based Reduced-Order Models for a Single-Injector Combustion Process

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          Abstract

          This paper presents a physics-based data-driven method to learn predictive reduced-order models (ROMs) from high-fidelity simulations and illustrates it in the challenging context of a single-injector combustion process. The method combines the perspectives of model reduction and machine learning. Model reduction brings in the physics of the problem, constraining the ROM predictions to lie on a subspace defined by the governing equations. This is achieved by defining the ROM in proper orthogonal decomposition (POD) coordinates, which embed the rich physics information contained in solution snapshots of a high-fidelity computational fluid dynamics model. The machine learning perspective brings the flexibility to use transformed physical variables to define the POD basis. This is in contrast to traditional model reduction approaches that are constrained to use the physical variables of the high-fidelity code. Combining the two perspectives, the approach identifies a set of transformed physical variables that expose quadratic structure in the combustion governing equations and learns a quadratic ROM from transformed snapshot data. This learning does not require access to the high-fidelity model implementation. Numerical experiments show that the ROM accurately predicts temperature, pressure, velocity, species concentrations, and the limit-cycle amplitude, with speedups of more than five orders of magnitude over high-fidelity models. Our ROM simulation is shown to be predictive 200% past the training interval. ROM-predicted pressure traces accurately match the phase of the pressure signal and yield good approximations of the limit-cycle amplitude.

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          Multilayer feedforward networks are universal approximators

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                Author and article information

                Conference
                aiaaj
                AIAA Journal
                AIAA Journal
                American Institute of Aeronautics and Astronautics
                1533-385X
                19 March 2020
                June 2020
                : 58
                : 6
                : 2658-2672
                Affiliations
                Massachusetts Institute of Technology , Cambridge, Massachusetts 02139
                University of California , San Diego, California 92122
                University of Michigan , Ann Arbor, Michigan 48109
                University of Texas at Austin , Austin, Texas 78712
                Author notes
                [*]

                Graduate Student, Center for Computational Engineering; swischuk@ 123456mit.edu . Student Member AIAA.

                [†]

                Assistant Professor, Department of Mechanical and Aerospace Engineering; bmkramer@ 123456ucsd.edu . Member AIAA.

                [‡]

                Assistant Research Scientist, Department of Aerospace Engineering; huangche@ 123456umich.edu . Member AIAA.

                [§]

                Director, Oden Institute for Computational Engineering and Sciences; kwillcox@ 123456oden.utexas.edu . Fellow AIAA.

                Article
                J058943 J058943
                10.2514/1.J058943
                cc244f8e-05a4-4279-aac0-e09a615d644a
                Copyright © 2019 by R. Swischuk, B. Kramer, C. Huang, and K. Willcox. Published by the American Institute of Aeronautics and Astronautics, Inc., with permission. All requests for copying and permission to reprint should be submitted to CCC at www.copyright.com; employ the eISSN 1533-385X to initiate your request. See also AIAA Rights and Permissions www.aiaa.org/randp.
                History
                : 9 August 2019
                : 22 December 2019
                : 23 January 2020
                Page count
                Figures: 16, Tables: 2
                Funding
                Funded by: Air Force Office of Scientific Researchhttp://dx.doi.org/10.13039/100000181
                Award ID: FA9550-15-1-0038
                Award ID: FA9550-17-1-0195
                Award ID: FA9550-18-1-0023
                Categories
                Regular Articles

                Engineering,Physics,Mechanical engineering,Space Physics
                Engineering, Physics, Mechanical engineering, Space Physics

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