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Sparsification techniques for reduced order models of turbulent flows

Sparsification techniques for reduced order models of turbulent flows
Sparsification techniques for reduced order models of turbulent flows
The complexity of scale interactions, arising from the increasing number of dynamically active flow structures, is a well-known problem for the numerical modelling of high Reynolds number flows. Without doubts, this complexity is the main obstacle to the development of computationally affordable and physically interpretable models of complex flows. This research focuses on the nonlinear energy interactions across modes in reduced order Galerkin models of turbulent flows demonstrating a novel approach to automatically identify relevant interactions. This work is motivated by the key observation that, in the dynamics of high Reynolds number flows, not all the interactions have the same contribution to the energy transfer between flow structures. With the proposed work, we aim to develop a set of techniques to systematically select the dominant interactions in Galerkin models of turbulent flows, therefore identifying dominant triadic interactions. In the present work, two different approaches have been developed. First, a regression-based approach where the relevant interactions are identified a posteriori according to their relative strength. Second, an a priori approach, where a new set of basis functions, encoding the sparsity features of the flow, is generated. The key aspect of the latter approach is that the reduced-order model obtained by Galerkin projection onto the subspace spanned by the basis has sparse matrix coefficients without the need for any a posteriori evaluation. Both approaches have been tested on a set of flow configurations of increasing complexity. Results show that both approaches can identify the subset of dominant interactions preserving their physics throughout the sparsification process. In addition, further analysis showed that the a priori sparsification method preserves better the physics of triadic interactions, resulting in a better long term time stability and, therefore, should be preferred. Looking into the future, to scale up the a priori methodology to a more complex configuration some aspects need to be further investigated such as the role of the initial guess on the uniqueness of the result and its properties.
University of Southampton
Rubini, Riccardo
f4c1935d-8a1a-4bec-b01a-01ddaf9a62ee
Rubini, Riccardo
f4c1935d-8a1a-4bec-b01a-01ddaf9a62ee
Lasagna, Davide
0340a87f-f323-40fb-be9f-6de101486b24

Rubini, Riccardo (2022) Sparsification techniques for reduced order models of turbulent flows. University of Southampton, Doctoral Thesis, 181pp.

Record type: Thesis (Doctoral)

Abstract

The complexity of scale interactions, arising from the increasing number of dynamically active flow structures, is a well-known problem for the numerical modelling of high Reynolds number flows. Without doubts, this complexity is the main obstacle to the development of computationally affordable and physically interpretable models of complex flows. This research focuses on the nonlinear energy interactions across modes in reduced order Galerkin models of turbulent flows demonstrating a novel approach to automatically identify relevant interactions. This work is motivated by the key observation that, in the dynamics of high Reynolds number flows, not all the interactions have the same contribution to the energy transfer between flow structures. With the proposed work, we aim to develop a set of techniques to systematically select the dominant interactions in Galerkin models of turbulent flows, therefore identifying dominant triadic interactions. In the present work, two different approaches have been developed. First, a regression-based approach where the relevant interactions are identified a posteriori according to their relative strength. Second, an a priori approach, where a new set of basis functions, encoding the sparsity features of the flow, is generated. The key aspect of the latter approach is that the reduced-order model obtained by Galerkin projection onto the subspace spanned by the basis has sparse matrix coefficients without the need for any a posteriori evaluation. Both approaches have been tested on a set of flow configurations of increasing complexity. Results show that both approaches can identify the subset of dominant interactions preserving their physics throughout the sparsification process. In addition, further analysis showed that the a priori sparsification method preserves better the physics of triadic interactions, resulting in a better long term time stability and, therefore, should be preferred. Looking into the future, to scale up the a priori methodology to a more complex configuration some aspects need to be further investigated such as the role of the initial guess on the uniqueness of the result and its properties.

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Published date: June 2022

Identifiers

Local EPrints ID: 467602
URI: http://eprints.soton.ac.uk/id/eprint/467602
PURE UUID: c8d09d7c-807c-44d1-8fa3-d6b634b85bf2
ORCID for Davide Lasagna: ORCID iD orcid.org/0000-0002-6501-6041

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Date deposited: 14 Jul 2022 17:22
Last modified: 17 Mar 2024 03:32

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Contributors

Author: Riccardo Rubini
Thesis advisor: Davide Lasagna ORCID iD

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