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Computational modelling of nasal respiratory flow

journal contribution
posted on 2024-11-02, 16:27 authored by Hadrien Calmet, Kiao InthavongKiao Inthavong, Herbert Owen, Damien Dosimont, Oriol Lehmkuhl, Guillaume Houzeaux, Mariano Vazquez
CFD has emerged as a promising diagnostic tool for clinical trials, with tremendous potential. However, for real clinical applications to be useful, overall statistical findings from large population samples (e.g., multiple cases and models) are needed. Fully resolved solutions are not a priority, but rather rapid solutions with fast turn-around times are desired. This leads to the issue of what are the minimum modelling criteria for achieving adequate accuracy in respiratory flows for large-scale clinical applications, with a view to rapid turnaround times. This study simulated a highly-resolved solution using the large eddy simulation (LES) method as a reference case for comparison with lower resolution models that included larger time steps and no turbulence modelling. Differences in solutions were quantified by pressure loss, flow resistance, unsteadiness, turbulence intensity, and hysteresis effects from multiple cycles. The results demonstrated that sufficient accuracy could be achieved with lower resolution models if the mean flow was considered. Furthermore, to achieve an established transient result unaffected by the initial start-up quiescent effects, the results need to be taken from at least the second respiration cycle. It was also found that the exhalation phase exhibited strong turbulence. The results are expected to provide guidance for future modelling efforts for clinical and engineering applications requiring large numbers of cases using simplified modelling approaches.

History

Journal

Computer Methods in Biomechanics and Biomedical Engineering

Volume

24

Issue

4

Start page

440

End page

458

Total pages

19

Publisher

Taylor and Francis.

Place published

United Kingdom

Language

English

Copyright

© 2020 Informa UK Limited, trading as Taylor & Francis Group.

Former Identifier

2006104119

Esploro creation date

2022-01-30

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