An Algebraic LCTM Model for Laminar–Turbulent Transition Prediction
Flow, Turbulence and Combustion, ISSN: 1573-1987, Vol: 109, Issue: 4, Page: 841-869
2022
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Article Description
A new algebraic RANS model for laminar–turbulent transition will be presented. The model follows the Local-Correlation-based Transition Modeling concept, is Galilean invariant and can handle natural, bypass and separation-induced transition. The model formulation is discussed in detail. A substantial number of test cases have been computed to evaluate the different transition mechanisms of the model.
Bibliographic Details
Springer Science and Business Media LLC
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