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Progress in Hybrid RANS-LES Modelling

Papers Contributed to the 7th Symposium on Hybrid RANS-LES Methods, 17–19 September, 2018, Berlin, Germany

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Gebonden, blz. | Engels
Springer International Publishing | e druk, 2019
ISBN13: 9783030276065
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Springer International Publishing e druk, 2019 9783030276065
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Samenvatting

This book gathers the proceedings of the Seventh Symposium on Hybrid RANS-LES Methods, which was held on September 17-19 in Berlin, Germany. The different chapters, written by leading experts, reports on the most recent developments in flow physics modelling, and gives a special emphasis to industrially relevant applications of hybrid RANS-LES methods and other turbulence-resolving modelling approaches. The book addresses academic researchers, graduate students, industrial engineers, as well as industrial R&D managers and consultants dealing with turbulence modelling, simulation and measurement, and with multidisciplinary applications of computational fluid dynamics (CFD), such as flow control, aero-acoustics, aero-elasticity and CFD-based multidisciplinary optimization. It discusses in particular advanced hybrid RANS-LES methods. Further topics include wall-modelled Large Eddy Simulation (WMLES) methods, embedded LES, Lattice-Bolzman methods and turbulence-resolving applications and a comparison of the LES methods with both hybrid RANS-LES and URANS methods. Overall, the book provides readers with a snapshot on the state-of-the-art in CFD and turbulence modelling, with a special focus to hybrid RANS-LES methods and their industrial applications.

 

Specificaties

ISBN13:9783030276065
Taal:Engels
Bindwijze:gebonden
Uitgever:Springer International Publishing

Inhoudsopgave

<p>Keynotes.-&nbsp;Scale-resolving modelling.-&nbsp;Modelling-related numerical aspects.-&nbsp;Wing/airfoil flows.-&nbsp;Aero-acoustic analysis.-&nbsp;Other aero- and hydrodynamic applications.</p>

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        Progress in Hybrid RANS-LES Modelling