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首页> 外文期刊>Progress in Aerospace Sciences >Supersonic jet and crossflow interaction: Computational modeling
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Supersonic jet and crossflow interaction: Computational modeling

机译:超音速射流与错流相互作用:计算模型

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摘要

The supersonic jet-in-crossflow problem which involves shocks, turbulent mixing, and large-scale vortical structures, requires special treatment for turbulence to obtain accurate solutions. Different turbulence modeling techniques are reviewed and compared in terms of their performance in predicting results consistent with the experimental data. Reynolds-averaged Navier-Stokes (RANS) models are limited in prediction of fuel structure due to their inability to accurately capture unsteadiness in the flow. Large eddy simulation (LES) is not yet practical due to prohibitively large grid requirement near the wall. Hybrid RANS/LES can offer reasonable compromise between accuracy and efficiency. The hybrid models are based on various approaches such as explicit blending of RANS and LES, detached eddy simulation (DES), and filter-based multi-scale models. In particular, they can be used to evaluate the turbulent Schmidt number modeling techniques used in jet-in-crossflow simulations. Specifically, an adaptive approach can be devised by utilizing the information obtained from the resolved field to help assign the value of turbulent Schmidt number in the sub-filter field. The adaptive approach combined with the multi-scale model improves the results especially when highly refined grids are needed to resolve small structures involved in the mixing process.
机译:涉及冲击,湍流混合和大型旋涡结构的超音速错流问题需要对湍流进行特殊处理才能获得精确的解。审查和比较了不同的湍流建模技术在预测与实验数据一致的结果方面的性能。雷诺平均的Navier-Stokes(RANS)模型由于无法准确捕获流中的不稳定因素而在燃料结构的预测上受到限制。由于靠近壁面的网格需求过大,因此大涡模拟(LES)尚不实用。混合RANS / LES可以在准确性和效率之间提供合理的折衷。混合模型基于各种方法,例如RANS和LES的显式混合,分离涡模拟(DES)和基于过滤器的多尺度模型。特别是,它们可用于评估横流喷射模拟中使用的湍流Schmidt数建模技术。具体地,可以利用从解析字段获得的信息来设计自适应方法,以帮助在子滤波器字段中分配湍流施密特数的值。自适应方法与多尺度模型相结合可改善结果,尤其是在需要高度精细的网格来解决混合过程中涉及的小结构时。

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