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Assessments of k-kL Turbulence Model Based on Menter's Modification to Rotta's Two-Equation Model

机译:基于Mentt对Rotta两方程模型的修正的k-kL湍流模型评估

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The main objective of this paper is to construct a turbulence model with a more reliable second equation simulating length scale. In the present paper, we assess the length scale equation based on Menter's modification to Rotta's two-equation model. Rotta shows that a reliable second equation can be formed in an exact transport equation from the turbulent length scale and kinetic energy. Rotta's equation is well suited for a term-by-term modeling and shows some interesting features compared to other approaches. The most important difference is that the formulation leads to a natural inclusion of higher order velocity derivatives into the source terms of the scale equation, which has the potential to enhance the capability of Reynolds-averaged Navier-Stokes to simulate unsteady flows. The model is implemented in the CFD solver with complete formulation, usage methodology, and validation examples to demonstrate its capabilities. The detailed studies include grid convergence. Near-wall and shear flows cases are documented and compared with experimental and large eddy simulation data. The results from this formulation are as good or better than the well-known shear stress turbulence model and much better than k-epsilon results. Overall, the study provides useful insights into the model capability in predicting attached and separated flows.
机译:本文的主要目的是用更可靠的第二个方程模拟长度尺度来构建湍流模型。在本文中,我们基于Menter对Rotta的两方程模型的修正来评估长度比例方程。 Rotta表明,根据湍流尺度和动能,可以在精确的输运方程中形成可靠的第二方程。 Rotta方程非常适合逐项建模,并且与其他方法相比,显示出一些有趣的功能。最重要的区别是该公式导致比例方程的源项中自然包含了更高阶的速度导数,这有可能增强雷诺平均Navier-Stokes模拟不稳定流的能力。该模型在CFD求解器中实现,具有完整的公式,用法和验证示例,以演示其功能。详细的研究包括网格收敛。记录了近壁和剪切流情况,并与实验和大型涡流模拟数据进行了比较。该公式的结果与众所周知的剪切应力湍流模型一样好或更好,并且比k-ε结果好得多。总体而言,该研究为预测​​附加流量和分离流量的模型功能提供了有用的见解。

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