Building Physics and Services, Eindhoven University of Technology, Eindhoven, The Netherlands.
Indoor Air. 2013 Jun;23(3):236-49. doi: 10.1111/ina.12010. Epub 2012 Nov 29.
Accurate prediction of ventilation flow is of primary importance for designing a healthy, comfortable, and energy-efficient indoor environment. Since the 1970s, the use of computational fluid dynamics (CFD) has increased tremendously, and nowadays, it is one of the primary methods to assess ventilation flow in buildings. The most commonly used numerical approach consists of solving the steady Reynolds-averaged Navier-Stokes (RANS) equations with a turbulence model to provide closure. This article presents a detailed validation study of steady RANS for isothermal forced mixing ventilation of a cubical enclosure driven by a transitional wall jet. The validation is performed using particle image velocimetry (PIV) measurements for slot Reynolds numbers of 1000 and 2500. Results obtained with the renormalization group (RNG) k-ε model, a low-Reynolds k-ε model, the shear stress transport (SST) k-ω model, and a Reynolds stress model (RSM) are compared with detailed experimental data. In general, the RNG k-ε model shows the weakest performance, whereas the low-Re k-ε model shows the best agreement with the measurements. In addition, the influence of the turbulence model on the predicted air exchange efficiency in the cubical enclosure is analyzed, indicating differences up to 44% for this particular case.
This article presents a detailed numerical study of isothermal forced mixing ventilation driven by a low-velocity (transitional) wall jet using steady computational fluid dynamics (CFD) simulations. It is shown that the numerically obtained room airflow patterns are highly dependent on the chosen turbulence model and large differences with experimentally obtained velocity fields can be present. The renormalization group (RNG) k-ε model, which is commonly used for room airflow modeling, shows the largest deviations from the measured velocities, indicating the care that must be taken when selecting a turbulence model for room airflow prediction. As a result of the different predictions of the flow pattern in the room, large differences are present between the predicted air exchange efficiency obtained with the four tested turbulence models, which can be as high as 44%.
准确预测通风流量对于设计健康、舒适和节能的室内环境至关重要。自 20 世纪 70 年代以来,计算流体动力学(CFD)的使用大大增加,如今,它是评估建筑物通风流量的主要方法之一。最常用的数值方法是求解稳态雷诺平均纳维-斯托克斯(RANS)方程,并使用湍流模型进行封闭。本文详细验证了稳态 RANS 在过渡壁射流驱动的立方封闭空间等温强制混合通风中的应用。验证使用粒子图像测速(PIV)测量在槽道雷诺数为 1000 和 2500 时进行。将重整化群(RNG)k-ε 模型、低雷诺 k-ε 模型、剪切应力输运(SST)k-ω 模型和雷诺应力模型(RSM)的结果与详细的实验数据进行了比较。一般来说,RNG k-ε 模型表现出最弱的性能,而低雷诺 k-ε 模型与测量值吻合得最好。此外,还分析了湍流模型对立方封闭空间中空气交换效率的预测的影响,表明在这种特殊情况下,差异可达 44%。
本文详细研究了低风速(过渡)壁射流驱动的等温强制混合通风,使用稳态计算流体动力学(CFD)模拟。结果表明,数值得到的房间气流模式高度依赖于所选的湍流模型,并且可能存在与实验获得的速度场的较大差异。常用的房间气流建模的重整化群(RNG)k-ε 模型与测量速度的偏差最大,表明在选择用于房间气流预测的湍流模型时必须谨慎。由于房间内流型的不同预测,四种测试的湍流模型得到的预测空气交换效率存在较大差异,最大可达 44%。