Importance-Driven Particle Techniques for Flow Visualization

K. Bürger, P. Kondratieva, J. Krüger, R. Westermann
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引用次数: 35

Abstract

Particle tracing has been established as a powerful visualization technique to show the dynamics of 3D flows. Particle tracing in 3D, however, quickly overextends the viewer due to the massive amount of visual information that is typically produced by this technique. In this paper, we present strategies to reduce this amount at the same time revealing important structures in the flow. As an importance measure, we introduce a simple, yet effective clustering approach for vector fields, and we use scalar flow quantities at different scales in combination with user-defined regions of interest. These measures are used to control the shape, the appearance, and the density of particles in such a way that the user can focus on the dynamics in important regions at the same time preserving context information. We also introduce a new focus for particle tracing, so called anchor lines. Anchor lines are used to analyze local flow features by visualizing how much particles separate over time and how long it takes until they have separated to a fixed distance. It is of particular interest if the finite time Lyapunov exponent - a scalar quantity that measures the rate of separation of infinitesimally close particles in the flow - is used to guide the placement of anchor lines. The effectiveness of our approaches for the visualization of 3D flow fields is validated using synthetic fields as well as real simulation data.
流动可视化的重要驱动粒子技术
粒子追踪已经成为一种强大的可视化技术来显示三维流动的动态。然而,由于这种技术通常产生大量的视觉信息,3D中的粒子跟踪很快就超出了观看者的范围。在本文中,我们提出了减少这一数量的策略,同时揭示了流中的重要结构。作为一种重要的度量,我们引入了一种简单而有效的向量场聚类方法,并使用不同尺度的标量流量与用户定义的感兴趣区域相结合。这些措施被用来控制形状、外观和粒子的密度,这样用户可以专注于重要区域的动态,同时保留上下文信息。我们还为粒子跟踪引入了一个新的焦点,即锚线。锚线用于分析局部流动特征,通过可视化颗粒随着时间的推移分离的数量以及它们分离到固定距离所需的时间。如果用有限时间李亚普诺夫指数——一种测量流动中无限小的紧密粒子的分离率的标量——来指导锚线的位置,这是特别有趣的。利用合成流场和真实仿真数据验证了我们的方法对三维流场可视化的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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