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Shift and flip invariant CNNs for predicting laminar flow properties

Koide, Yuri 1,2; Teufel, Jonas ORCID iD icon 1,2; Torresi, Luca 1,2; Kaithakkal, Arjun J. ORCID iD icon 3; Stroh, Alexander ORCID iD icon 3; Friederich, Pascal ORCID iD icon 1,2
1 Institut für Nanotechnologie (INT), Karlsruher Institut für Technologie (KIT)
2 Institut für Anthropomatik und Robotik (IAR), Karlsruher Institut für Technologie (KIT)
3 Institut für Strömungsmechanik (ISTM), Karlsruher Institut für Technologie (KIT)

Abstract:

The integration of machine learning into fluid dynamics has accelerated in recent years, driven by the proliferation of high-fidelity data and enhanced computational resources. Acting as efficient surrogate models for computationally intensive simulations, these data-driven approaches provide substantial benefits, particularly during the preliminary stages of design and optimization. Previous investigations have employed convolutional neural networks (CNNs) to predict thermo-fluid flow properties for a variety of channel geometries. These studies have largely relied on data augmentation techniques to handle geometric transformations. However, such augmentation strategies are often inefficient in capturing the inherent flip and shift invariances of flow channel data. In this study, we demonstrate that embedding these invariances directly into the model architecture not only enhances robustness but leads to superior performance while significantly reducing the number of parameters compared to their invariant-unaware counterparts. In particular, we introduce two novel architectures designed to alleviate the sensitivity of CNNs to periodic signal shifts and vertical flips. ... mehr


Verlagsausgabe §
DOI: 10.5445/IR/1000191543
Veröffentlicht am 19.03.2026
Cover der Publikation
Zugehörige Institution(en) am KIT Institut für Anthropomatik und Robotik (IAR)
Institut für Nanotechnologie (INT)
Institut für Strömungsmechanik (ISTM)
Publikationstyp Zeitschriftenaufsatz
Publikationsdatum 17.03.2026
Sprache Englisch
Identifikator ISSN: 2770-9019
KITopen-ID: 1000191543
Erschienen in APL Machine Learning
Verlag AIP Publishing
Band 4
Heft 1
Seiten Art.-Nr. 016109
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