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A Combined Eulerian-Lagrangian Data Representation for Large-Scale Applications

机译:大规模应用的组合欧拉-拉格朗日数据表示

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The Eulerian and Lagrangian reference frames each provide a unique perspective when studying and visualizing results from scientific systems. As a result, many large-scale simulations produce data in both formats, and analysis tasks that simultaneously utilize information from both representations are becoming increasingly popular. However, due to their fundamentally different nature, drawing correlations between these data formats is a computationally difficult task, especially in a large-scale setting. In this work, we present a new data representation which combines both reference frames into a joint Eulerian-Lagrangian format. By reorganizing Lagrangian information according to the Eulerian simulation grid into a “unit cell” based approach, we can provide an efficient out-of-core means of sampling, querying, and operating with both representations simultaneously. We also extend this design to generate multi-resolution subsets of the full data to suit the viewer’s needs and provide a fast flow-aware trajectory construction scheme. We demonstrate the effectiveness of our method using three large-scale real world scientific datasets and provide insight into the types of performance gains that can be achieved.
机译:当研究和可视化科学系统的结果时,欧拉和拉格朗日参考系分别提供了独特的视角。结果,许多大型仿真都以两种格式生成数据,并且同时利用两种表示形式的信息进行的分析任务变得越来越流行。但是,由于它们本质上的不同,这些数据格式之间的绘图相关性在计算上是一项艰巨的任务,尤其是在大规模设置中。在这项工作中,我们提出了一种新的数据表示形式,它将两个参考框架组合成一个联合的欧拉-拉格朗日格式。通过根据欧拉模拟网格将拉格朗日信息重新组织为基于“单位单元”的方法,我们可以提供一种有效的核心方法,同时进行两种采样,查询和操作。我们还扩展了这种设计,以生成完整数据的多分辨率子集,以满足观看者的需求,并提供一种快速的流程感知轨迹构建方案。我们使用三个大规模的现实世界科学数据集证明了我们方法的有效性,并提供了可以实现的性能提升类型的见解。

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