Numerical Study of Fluid Mixture Characteristics at 90° Angles with Variations of Standard Wall Functions on the k-ε Turbulence Model

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Abstract

A numerical study has been carried out to determine the characteristics of fluid mixtures with different temperatures at 90° angles using ANSYS Fluent Computational Fluid Dynamics (CFD). The variation of the turbulence model used is k-ε, which is standard, RNG, and Realizable with the Near Wall Treatment method of Standard Wall Functions. The simulation domain is 90° angled with 2 perpendicular inputs and one output. The first step is to do a grid independence analysis with different mesh variations to get a proportional mesh. The research object is focused on section 6 with a distance of 35 cm before the flow output or located at 105 cm from the coordinate center. Validation was carried out by comparing temperature and velocity magnitude in research from S.N. Sridhara in section 6. It was found that the standard k-ε turbulence model was the best compared to the other variations. This gives a good idea of the distribution and flow behavior of the fluid which can be used for efficient elbow design.
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k-ε湍流模型90°角下标准壁函数变化下流体混合特性的数值研究
利用ANSYS Fluent计算流体动力学(CFD)软件对不同温度下90°角下流体混合物的特性进行了数值研究。所使用的湍流模型的变化量为k-ε,是标准的、RNG的,可以用标准壁函数的近壁处理方法实现。仿真域为90°角,有2个垂直输入和1个输出。第一步是对不同网格变化进行网格独立性分析,得到比例网格。研究对象集中在流输出前35cm处或距坐标中心105cm处的第6段。通过比较S.N. Sridhara在第6节中的研究中的温度和速度量级进行了验证。结果表明,标准k-ε湍流模型与其他模型相比效果最好。这可以很好地了解流体的分布和流动特性,可以用于有效的弯头设计。
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