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Visualization-Driven Structural and Statistical Analysis of Turbulent Flows

机译:可视化驱动的湍流结构和统计分析

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Knowledge extraction from data volumes of ever increasing size requires ever more flexible tools to facilitate interactive query. Interactivity enables real-time hypothesis testing and scientific discovery, but can generally not be achieved without some level of data reduction. The approach described in this paper combines multi-resolution access, region-of-interest extraction, and structure identification in order to provide interactive spatial and statistical analysis of a terascale data volume. Unique aspects of our approach include the incorporation of both local and global statistics of the flow structures, and iterative refinement facilities, which combine geometry, topology, and statistics to allow the user to effectively tailor the analysis and visualization to the science, Working together, these facilities allow a user to focus the spatial scale and domain of the analysis and perform an appropriately tailored multivariate visualization of the corresponding data. All of these ideas and algorithms are instantiated in a deployed visualization and analysis tool called VAPOR, which is in routine use by scientists internationally. In data from a 1024~3 simulation of a forced turbulent flow, VAPOR allowed us to perform a visual data exploration of the flow properties at interactive speeds, leading to the discovery of novel scientific properties of the flow, in the form of two distinct vortical structure populations. These structures would have been very difficult (if not impossible) to find with statistical overviews or other existing visualization-driven analysis approaches. This kind of intelligent, focused analysis/refinement approach will become even more important as computational science moves towards petascale applications.
机译:从越来越多的数据量的知识提取需要更灵活的工具来促进交互式查询。交互性使得实时假设检测和科学发现,但通常不能在没有某种程度的数据减少的情况下实现。本文描述的方法结合了多分辨率访问,兴趣区域的提取和结构识别,以便提供TeraScale数据量的交互式空间和统计分析。我们方法的独特方面包括纳入流动结构的本地和全局统计数据,以及迭代细化设施,它组合几何,拓扑和统计数据,使用户能够有效地定制对科学的分析和可视化,共同努力,这些设施允许用户集中分析的空间尺度和域,并执行相应数据的适当定制的多变量可视化。所有这些想法和算法都在部署的可视化和分析工具中实例化,称为蒸气,这是科学家在国际上的常规使用中。在数据的数据中,蒸汽允许我们以交互式速度进行流动性能的视觉数据探索,导致流动的新颖性质,以两个不同的涡流的形式发现。结构群体。这些结构非常困难(如果不是不可能的),以查找统计概述或其他现有的可视化驱动的分析方法。随着计算科学向普通应用的移动,这种智能化的分析/细化方法将变得更加重要。

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