том 1010 номер публикации R4

Observable-augmented manifold learning for multi-source turbulent flow data

Тип публикацииJournal Article
Дата публикации2025-05-09
SCImago Q1
Tоп 10% SCImago
WOS Q1
БС1
SJR1.283
CiteScore6.8
Impact factor4.2
ISSN00221120, 14697645
Краткое описание

This study seeks a low-rank representation of turbulent flow data obtained from multiple sources. To uncover such a representation, we consider finding a finite-dimensional manifold that captures underlying turbulent flow structures and characteristics. While nonlinear machine-learning techniques can be considered to seek a low-order manifold from flow field data, there exists an infinite number of transformations between data-driven low-order representations, causing difficulty in understanding turbulent flows on a manifold. Finding a manifold that captures turbulence characteristics becomes further challenging when considering multi-source data together due to the presence of inherent noise or uncertainties and the difference in the spatiotemporal length scale resolved in flow snapshots, which depends on approaches in collecting data. With an example of numerical and experimental data sets of transitional turbulent boundary layers, this study considers an observable-augmented nonlinear autoencoder-based compression, enabling data-driven feature extraction with prior knowledge of turbulence. We show that it is possible to find a low-rank subspace that not only captures structural features of flows across the Reynolds number but also distinguishes the data source. Along with machine-learning-based super-resolution, we further argue that the present manifold can be used to validate the outcome of modern data-driven techniques when training and evaluating across data sets collected through different techniques. The current approach could serve as a foundation for a range of analyses including reduced-complexity modelling and state estimation with multi-source turbulent flow data.

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Journal of Fluid Mechanics
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Physics of Fluids
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Physica D: Nonlinear Phenomena
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Mechanical Systems and Signal Processing
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European Journal of Mechanics, B/Fluids
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ГОСТ |
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FUKAMI K. et al. Observable-augmented manifold learning for multi-source turbulent flow data // Journal of Fluid Mechanics. 2025. Vol. 1010. R4
ГОСТ со всеми авторами (до 50) Скопировать
FUKAMI K., Taira K. Observable-augmented manifold learning for multi-source turbulent flow data // Journal of Fluid Mechanics. 2025. Vol. 1010. R4
RIS |
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TY - JOUR
DO - 10.1017/jfm.2025.383
UR - https://www.cambridge.org/core/product/identifier/S0022112025003830/type/journal_article
TI - Observable-augmented manifold learning for multi-source turbulent flow data
T2 - Journal of Fluid Mechanics
AU - FUKAMI, Kai
AU - Taira, Kunihiko
PY - 2025
DA - 2025/05/09
PB - Cambridge University Press
VL - 1010
SN - 0022-1120
SN - 1469-7645
ER -
BibTex
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BibTex (до 50 авторов) Скопировать
@article{2025_FUKAMI,
author = {Kai FUKAMI and Kunihiko Taira},
title = {Observable-augmented manifold learning for multi-source turbulent flow data},
journal = {Journal of Fluid Mechanics},
year = {2025},
volume = {1010},
publisher = {Cambridge University Press},
month = {may},
url = {https://www.cambridge.org/core/product/identifier/S0022112025003830/type/journal_article},
pages = {R4},
doi = {10.1017/jfm.2025.383}
}
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