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Interpolation-Based Pathline Tracing in Particle-Based Flow Visualization

机译:基于粒子的流可视化中基于插值的路径跟踪

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Particle tracing in time-varying flow fields is traditionally performed by numerical integration of the underlying vector field. This procedure can become computationally expensive, especially in scattered, particle-based flow fields, which complicate interpolation due to the lack of an explicit neighborhood structure. If such a particle-based flow field allows for the identification of consecutive particle positions, an alternative approach to particle tracing can be employed: we substitute repeated numerical integration of vector data by geometric interpolation in the highly dynamic particle system as defined by the particle-based simulation. To allow for efficient and accurate location and interpolation of changing particle neighborhoods, we develop a modified k-d tree representation that is capable of creating a dynamic partitioning of even highly compressible data sets with strongly varying particle densities. With this representation we are able to efficiently perform pathline computation by identifying, tracking, and updating an enclosing, dynamic particle neighborhood as particles move overtime. We investigate and evaluate the complexity, accuracy, and robustness of this interpolation-based alternative approach to trajectory generation in compressible and incompressible particle systems generated by simulation techniques such as Smoothed Particle Hydrodynamics (SPH).
机译:传统上,时变流场中的粒子跟踪是通过基础矢量场的数值积分来执行的。此过程可能会变得计算量大,特别是在基于粒子的分散流场中,由于缺少显式的邻域结构,该过程使插值变得复杂。如果这种基于粒子的流场可以识别连续的粒子位置,则可以采用另一种方法来进行粒子追踪:我们用几何插值法代替向量数据的重复数值积分,该几何插值是由粒子定义的。基于模拟。为了能够有效且准确地定位和插补变化中的粒子邻域,我们开发了一种改进的k-d树表示形式,该表示形式能够对具有极大变化的粒子密度的甚至高度可压缩的数据集进行动态分区。通过这种表示,我们可以通过随着粒子的超时移动来识别,跟踪和更新封闭的动态粒子邻域,从而有效地执行路径计算。我们调查和评估这种基于插值的替代方法在可压缩和不可压缩粒子系统中通过模拟技术(如平滑粒子流体动力学(SPH))生成的轨迹生成的复杂性,准确性和鲁棒性。

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