Efficiency of randomised dynamic mode decomposition for reduced order modelling |
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Authors: | D. A. Bistrian I. M. Navon |
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Affiliation: | 1. Department of Electrical Engineering and Industrial Informatics, Politehnica University of Timisoara, Hunedoara Romaniadiana.bistrian@fih.upt.ro;3. Department of Scientific Computing, Florida State University, Tallahassee, FL, USA |
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Abstract: | ABSTRACTThe purpose of this paper is the identification of a reduced order model (ROM) from numerical code output by non-intrusive techniques (i.e. not requiring projecting of the governing equations onto the reduced basis modes). In this paper, we perform a comparison between two methods of model order reduction based on dynamic mode decomposition (DMD). The first method is a deterministic (classic) DMD technique endowed with a dynamic filtering criterion of selection of modes used in the ROM model. The second method is an adaptive randomised DMD algorithm (ARDMD) based on a randomised singular value decomposition. This produced an accelerating algorithm, which is endowed with a few additional advantages. In addition, the reduced order model is guaranteed to satisfy the boundary conditions of the full model, which is crucial for surrogate modelling. For numerical illustration, we use the shallow water equations model. |
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Keywords: | Dynamic mode decomposition randomised dynamic mode decomposition non-intrusive reduced order modelling shallow water equations |
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