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Scalable Lagrangian-Based Attribute Space Projection for Multivariate Unsteady Flow Data

机译:基于拉格朗日的基于Lagrangian的属性空间投影,用于多变量非定常流量数据

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In this paper, we present a novel scalable approach for visualizing multivariate unsteady flow data with Lagrangian-based Attribute Space Projection (LASP). The distances between spatial temporal samples are evaluated by their attribute values along the advection directions in the flow field. The massive samples are then projected into 2D screen space for feature identification and selection. A hybrid parallel system, which tightly integrates a MapReduce-style particle tracer with a scalable algorithm for massive projection, is designed to support the large scale analysis. Results show that the proposed methods and system are capable of visualizing features in the unsteady flow, which couples multivariate analysis of vector and scalar attributes with projection.
机译:在本文中,我们提出了一种新颖的可扩展方法,可通过基于拉格朗日的属性空间投影(LASP)来可视化多变量非定常流量数据。空间时间样本之间的距离由流场中的平流方向的它们的属性值进行评估。然后将巨大的样本投射到2D屏幕空间中,用于特征识别和选择。混合并行系统,其用可伸缩算法紧密地集成Mapreduce粒子示踪器,用于用于大规模投影,旨在支持大规模分析。结果表明,所提出的方法和系统能够在不稳定流中可视化特征,耦合与投影的传染媒介和标量属性的多变量分析。

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