Wavelet adaptive proper orthogonal decomposition for large-scale flow data
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Published:2022-02-17
Issue:2
Volume:48
Page:
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ISSN:1019-7168
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Container-title:Advances in Computational Mathematics
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language:en
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Short-container-title:Adv Comput Math
Author:
Krah PhilippORCID, Engels ThomasORCID, Schneider KaiORCID, Reiss JuliusORCID
Abstract
AbstractThe proper orthogonal decomposition (POD) is a powerful classical tool in fluid mechanics used, for instance, for model reduction and extraction of coherent flow features. However, its applicability to high-resolution data, as produced by three-dimensional direct numerical simulations, is limited owing to its computational complexity. Here, we propose a wavelet-based adaptive version of the POD (the wPOD), in order to overcome this limitation. The amount of data to be analyzed is reduced by compressing them using biorthogonal wavelets, yielding a sparse representation while conveniently providing control of the compression error. Numerical analysis shows how the distinct error contributions of wavelet compression and POD truncation can be balanced under certain assumptions, allowing us to efficiently process high-resolution data from three-dimensional simulations of flow problems. Using a synthetic academic test case, we compare our algorithm with the randomized singular value decomposition. Furthermore, we demonstrate the ability of our method analyzing data of a two-dimensional wake flow and a three-dimensional flow generated by a flapping insect computed with direct numerical simulation.
Funder
Deutsche Forschungsgemeinschaft Grand Équipement National De Calcul Intensif Technische Universität Berlin
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computational Mathematics
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