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A novel method for unsteady flow field segmentation based on stochastic similarity of direction

机译:基于随机相似性的非定常流场分割的一种新方法

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Recent developments in fluid dynamics research have opened up the possibility for the detailed quantitative understanding of unsteady flow fields. However, the visualization techniques currently in use generally provide only qualitative insights. A method for dividing the flow field into physically relevant regions of interest can help researchers quantify unsteady fluid behaviors. Most methods at present compare the trajectories of virtual Lagrangian particles. The time-invariant features of an unsteady flow are also frequently of interest, but the Lagrangian specification only reveals time-variant features. To address these challenges, we propose a novel method for the time-invariant spatial segmentation of an unsteady flow field. This segmentation method does not require Lagrangian particle tracking but instead quantitatively compares the stochastic models of the direction of the flow at each observed point. The proposed method is validated with several clustering tests for 3D flows past a sphere. Results show that the proposed method reveals the time-invariant, physically relevant structures of an unsteady flow.
机译:流体动力学研究的最新发展已经开辟了对不稳定的流场的详细定量理解的可能性。然而,目前正在使用的可视化技术通常仅提供定性见解。将流场划分为物理相关的感兴趣区域的方法可以帮助研究人员量化不稳定的流体行为。目前大多数方法比较虚拟拉格朗日粒子的轨迹。不稳定流的时间不变的功能也经常感兴趣,但拉格朗日规范仅显示了时变特征。为解决这些挑战,我们提出了一种新的方法,即不稳定流场的不变空间分割。该分割方法不需要拉格朗日粒子跟踪,而是定量地比较每个观察点处的流动方向的随机模型。该提出的方法被验证了几种用于3D流过球体的聚类测试。结果表明,该方法揭示了不稳定流量的时代的物理相关结构。

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