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Title:

Deep Learning Framework for Predicting Transonic Wing Buffet Loads Due to Structural Eigenmode-Based Deformations

Document type:
Zeitschriftenaufsatz
Author(s):
Zahn, Rebecca; Zieher, Moritz; Breitsamter, Christian
Abstract:
In the present paper, a reduced-order modeling (ROM) approach based on a hybrid neural network is presented in order to calculate wing buffet pressure distributions due to structural eigenmode-based deformations. The accurate prediction of unsteady surface pressure distributions is crucial for assessing aeroelastic stability and preventing structural failure, but full-order simulations are computationally expensive; the proposed ROM provides a fast and efficient alternative with a sufficient le...     »
Keywords:
convolutional autoencoder; deep learning; long short-term memory neural network; NASA CRM; wing buffet aerodynamics
Dewey Decimal Classification:
620 Ingenieurwissenschaften
Journal title:
Aerospace
Year:
2025
Journal volume:
12
Journal issue:
5
Pages contribution:
415
Covered by:
Scopus
Language:
en
Fulltext / DOI:
doi:10.3390/aerospace12050415
Publisher:
MDPI AG
E-ISSN:
2226-4310
Notes:
Acknowledgments: The Gauss Centre of Supercomputing e.V. is gratefully acknowledged for funding this project by providing computing time on the SuperMUC-NG at Leibniz Supercomputing Centre. In addition, the authors thank the Institute of Aerodynamics and Gas Dynamics of the University of Stuttgart, in particular Maximilian Ehrle, for providing the numerical grid of the CRM.
Submitted:
14.04.2025
Accepted:
06.05.2025
Date of publication:
07.05.2025
TUM Institution:
Lehrstuhl für Aerodynamik und Strömungsmechanik
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