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Distribution-based Particle Data Reduction for In-situ Analysis and Visualization of Large-scale N-body Cosmological Simulations

机译:基于分布的粒子数据降低,用于出于原位分析和大规模N-Body宇宙学模拟的可视化

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Cosmological N-body simulation is an important tool for scientists to study the evolution of the universe. With the increase of computing power, billions of particles of high space-time fidelity can be simulated by supercomputers. However, limited computer storage can only hold a small subset of the simulation output for analysis, which makes the understanding of the underlying cosmological phenomena difficult. To alleviate the problem, we design an in-situ data reduction method for large-scale unstructured particle data. During the data generation phase, we use a combined k-dimensional partitioning and Gaussian mixture model approach to reduce the data by utilizing probability distributions. We offer a model evaluation criterion to examine the quality of the probabilistic distribution models, which allows us to identify and improve low-quality models. After the in-situ processing, the particle data size is greatly reduced, which satisfies the requirements from the domain experts. By comparing the astronomical attributes and visualizations of the reconstructed data with the raw data, we demonstrate the effectiveness of our in-situ particle data reduction technique.
机译:宇宙n身体模拟是研究宇宙演变的重要工具。随着计算能力的增加,超级计算机可以模拟数十亿的高空时间保真度粒子。然而,有限的计算机存储只能保持用于分析的模拟输出的小子集,这使得了解难以实现潜在的宇宙学现象。为了缓解问题,我们设计了用于大规模非结构化粒子数据的原位数据减少方法。在数据生成阶段期间,我们使用组合的K维分区和高斯混合模型方法来通过利用概率分布来减少数据。我们提供模型评估标准,以检查概率分布模型的质量,使我们能够识别和改善低质量模型。在原位处理之后,粒子数据大小大大减少,这满足了来自域专家的要求。通过将重建数据与原始数据进行比较,我们证明了我们原位粒子数据减少技术的有效性。

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