涡流
有界函数
物理
矢量场
涡度
经典力学
湍流
旋涡脱落
流量(数学)
机械
起动涡流
领域(数学)
涡流管
数学分析
涡流片
旋涡伸展
汉堡漩涡
分层流
计算机模拟
数值分析
涡流环
马蹄涡
势流
作者
Zihui Zhang,Ruizhi Jin,Qinyu Cai,Yuxiang Liu,Kejun Dong,Yumeng Zhang,Bo Wang
摘要
Bounded vortices are common in engineering systems and typically exhibit complex three-dimensional turbulent flow structures. However, existing modeling approaches predominantly rely on simplified two-dimensional vortex models, which limit accurate prediction and theoretical understanding of such flows. Cyclone separators—a representative example of bounded vortex applications—lack robust analytical models capable of describing their three-dimensional velocity fields. In contrast, unbounded vortex models inspired by natural tornadoes have achieved theoretical maturity but fail to capture the boundary-induced forced downdrafts present in confined systems. Motivated by this gap, this study investigates the dynamic features of classical one-cell and two-cell tornado vortices and compares them with numerical flow fields in bounded configurations. A characteristic “three-cell vortex” pattern, composed of an outer downdraft, central updraft, and near-axis downdraft, is identified as a fundamental flow structure in bounded vortex systems. Using the locus of zero vertical velocity as a virtual boundary, the overall flow field is divided into inner and outer regions. By applying physically reasonable assumptions in each region, the Navier–Stokes equations are simplified to obtain analytical expressions for tangential and axial velocities. A three-dimensional bounded vortex model—termed guided external-enhanced (GEE) model—is then formulated based on this framework. The GEE model is applied to reconstruct the flow fields under various geometric and operational conditions. Comparison with numerical simulation results demonstrates strong consistency, particularly in capturing the key features of the three-cell vortex structure. These results confirm the GEE model's effectiveness in providing rapid and reliable predictions for bounded vortex flows in industrial applications.
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