Efficient Solution Strategies for Cabin Noise Assessment of Wave-Resolving Aircraft Fuselage Models
For the purpose of high-fidelity aircraft cabin noise simulations during early design phases, we examine three efficient solving approaches for the fully coupled finite element model of an aircraft fuselage segment. Obtaining an efficient solution with respect to consumed computational time and reso...
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Veröffentlicht in: | Journal of theoretical and computational acoustics 2024-12, Vol.32 (4) |
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Hauptverfasser: | , , , |
Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | For the purpose of high-fidelity aircraft cabin noise simulations during early design phases, we examine three efficient solving approaches for the fully coupled finite element model of an aircraft fuselage segment. Obtaining an efficient solution with respect to consumed computational time and resources is challenging within a conventional simulation pipeline, as large-scale and complex vibroacoustic models demand crucially high computational costs with increasing frequency. In this contribution, we adopt (1) frequency and domain specific discretization, (2) domain-decomposition techniques, and (3) model order reduction with rational Arnoldi Krylov subspace methods for an aircraft fuselage model. The three approaches have shown remarkable advantage thereby reducing the solving time as well as the memory requirement that are essential when solving large-scale models. While the discretization and the model order reduction approaches accelerate the solving process by efficiently handling the complexity of the system to be solved, domain-decomposition techniques further handle the aspect of reducing the overall memory consumption. Finally with the help of active research aircraft segment models, we implement and showcase the achieved efficiency. |
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ISSN: | 2591-7285 2591-7811 |
DOI: | 10.1142/S259172852450018X |