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EFFECT OF RANS METHOD ON STALL INCEPTION EIGENVALUE APPROACH

机译:RANS方法对失速特征值方法的影响

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The effect of mesh, turbulence model and discretization scheme in Reynolds-averaged Navier-Stokes method (RANS) on a stall inception eigenvalue approach is investigated in a transonic compressor rotor. The most influencing flow structures on the result of eigenvalue approach are also identified. The compressor stall point is calculated by a recently developed eigenvalue model. Based on the 3D Navier-Stokes equations, the body-force term and small disturbance were used to transform the original equations into the eigenvalue approach. Because the eigenvalue mainly relies on the results from RANS, the sensitivity of the eigenvalue to the mesh density, turbulence model, and numerical scheme needs to be clearly identified before it is applied to engineering. The effect of mesh density is firstly specified. Several grids with different densities and distributions are employed in RANS. The eigenvalue results indicate that the solution converges at the same grid density as RANS does. Besides, the eigenvalue approach has the ability to predict a more accurate stall point compare to RANS with a coarse computational grid. The investigation of the detailed flow field indicates that the flow structures in the vicinity of blade tip region change significantly with three different grid densities, the eigenvalue is also influenced. Two important flow mechanisms are found to be the decisive factors for the eigenvalue, namely the blockage generated by the shock-vortex interaction, the separated flow and the wake near the trailing edge. These flow patterns are consistent with the flow mechanisms of the compressor stall inception. Further investigations are conducted with four different turbulence models combined with three different spatial discretization schemes. Calculated eigenvalue proves that the turbulence model changes the eigenvalue with an over-prediction of stall point at about 1%. The spatial discretization scheme has small effect on stall point prediction using k-e and SA models, whereas it has large effect when using SST model. The scheme shows great influence in the simulations with specific turbulence model by changing the predicted stall point at least 1.7%. The existence of blockage, the separation and the wake flow are identified as the major and secondary factor which contributes to an unstable prediction of eigenvalue approach, respectively.
机译:研究了跨音速压缩机转子中雷诺平均Navier-Stokes方法(RANS)中的网格,湍流模型和离散化方案对失速开始特征值方法的影响。还确定了对特征值法结果影响最大的流结构。通过最近开发的特征值模型来计算压缩机失速点。基于3D Navier-Stokes方程,将体力项和小扰动用于将原始方程转换为特征值方法。由于特征值主要依赖于RANS的结果,因此在将其应用于工程之前,需要明确确定特征值对网格密度,湍流模型和数值方案的敏感性。首先确定网格密度的影响。在RANS中使用了几个具有不同密度和分布的网格。特征值结果表明,解收敛于与RANS相同的网格密度。此外,与具有粗略计算网格的RANS相比,特征值方法具有预测更准确的失速点的能力。对详细流场的研究表明,叶片尖端区域附近的流动结构会随着三种不同的网格密度而发生显着变化,特征值也会受到影响。发现两个重要的流动机制是特征值的决定性因素,即,由震荡涡相互作用产生的阻塞,分离的流动和后缘附近的尾流。这些流动模式与压缩机失速开始的流动机理是一致的。结合四种不同的湍流模型和三种不同的空间离散方案进行了进一步的研究。计算出的特征值证明了湍流模型改变了特征值,而失速点的高估约为1%。空间离散方案对使用k-e和SA模型的失速点预测影响很小,而在使用SST模型时则影响很大。通过将预测失速点改变至少1.7%,该方案在特定湍流模型的仿真中显示出很大的影响力。阻塞,分离和尾流的存在分别被认为是造成特征值方法不稳定预测的主要因素和次要因素。

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