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首页> 外文期刊>Advances in civil engineering >Numerical Simulation and Optimization of Wind Effects of Porous Parapets on Low-Rise Buildings with Flat Roofs
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Numerical Simulation and Optimization of Wind Effects of Porous Parapets on Low-Rise Buildings with Flat Roofs

机译:扁平屋顶低层建筑对多孔栏杆风效的数值模拟与优化

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摘要

This paper presents a procedure to optimize the porosity of parapets to improve the aerodynamic behavior of low-rise buildings with flat roofs, by coupling an optimization algorithm and computational fluid dynamics (CFD) simulations. The performance of solid parapets to decrease the wind suctions on flat roofs induced by conical vortices was firstly studied, based on four turbulence closure models (standard k-ε, RNG k-ε, SST k-ω, and RSM). The simulation results were validated by comparing with the wind tunnel data. Additionally, the porous parapet was treated as a momentum sink in the governing momentum equation, and the RSM turbulence model was employed. As a result, six optimization studies focusing on the highest mean suction minimization that consider parapet height were presented. The aim of this paper is to search for the best performing porosity through an automatic CFD-based optimization methodology. At low relative heights (hp/H?=?0.01~0.05, hp is the parapet height, and H is the roof height), the porous parapet with optimal porosity in between 38.2% and 52.3% seems to be more effective than solid parapets in attenuating high corner suctions generated by conical vortices; however, the solid parapet gives the best performance in the reduction of wind suctions when hp/H?≥?0.07.
机译:本文通过耦合优化算法和计算流体动力学(CFD)仿真,提出了一种优化栏杆孔隙率,以改善具有平顶屋顶的低层建筑的空气动力学行为。基于四个湍流闭合模型(标准K-ε,RNG k-ε,SST k-Ω和RSM,首先研究了固体栏杆对锥形涡流引起的平顶屋顶上的风画件的性能。通过与风洞数据进行比较验证了模拟结果。另外,在控制动量方程中将多孔栏杆作为动量水槽处理,并且使用RSM湍流模型。结果,六种优化研究专注于介绍了考虑栏杆高度的最高平均抽吸最小化。本文的目的是通过自动基于CFD的优化方法搜索最佳性能的孔隙度。在低相位高度(HP / H = 0.01〜0.05,HP是栏杆高度,H是屋顶高度),最佳孔隙率的多孔桥在38.2%和52.3%之间似乎比固体护套更有效在衰减由锥形涡流产生的高角落吸取液中;但是,当HP / H时,固体栏杆在减少风像时赋予最佳性能?≥<0.07。

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