Materialized community ground models for large-scale earthquake simulation

S. Schlosser, Michael P. Ryan, Ricardo Taborda-Rios, J. C. López-Hernández, D. O'Hallaron, J. Bielak
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引用次数: 20

Abstract

Large-scale earthquake simulation requires source datasets which describe the highly heterogeneous physical characteristics of the earth in the region under simulation. Physical characteristic datasets are the first stage in a simulation pipeline which includes mesh generation, partitioning, solving, and visualization. In practice, the data is produced in an ad-hoc fashion for each set of experiments, which has several significant shortcomings including lower performance, decreased repeatability and comparability, and a longer time to science, an increasingly important metric. As a solution to these problems, we propose a new approach for providing scientific data to ground motion simulations, in which ground model datasets are fully materialized into octress stored on disk, which can be more efficiently queried (by up to two orders of magnitude) than the underlying community velocity model programs. While octrees have long been used to store spatial datasets, they have not yet been used at the scale we propose. We further propose that these datasets can be provided as a service, either over the Internet or, more likely, in a data center or supercomputing center in which the simulations take place. Since constructing these octrees is itself a challenge, we present three data-parallel techniques for efficiently building them, which can significantly decrease the build time from days or weeks to hours using commodity clusters. This approach typifies a broader shift toward science as a service techniques in which scientific computation and storage services become more tightly intertwined.
大尺度地震模拟的物化社区地面模型
大尺度地震模拟需要能够描述模拟区域内地球高度非均匀物理特征的源数据集。物理特征数据集是仿真流水线的第一阶段,包括网格生成、划分、求解和可视化。在实践中,每组实验的数据都是以一种特别的方式产生的,这有几个明显的缺点,包括性能较低,可重复性和可比性降低,以及科学研究的时间较长,这是一个越来越重要的指标。为了解决这些问题,我们提出了一种为地面运动模拟提供科学数据的新方法,其中地面模型数据集完全物化到存储在磁盘上的数据中,可以比底层社区速度模型程序更有效地查询(高达两个数量级)。虽然八叉树长期以来一直用于存储空间数据集,但它们尚未在我们提出的规模上使用。我们进一步建议,这些数据集可以作为一种服务提供,要么通过互联网,要么更有可能在进行模拟的数据中心或超级计算中心提供。由于构建这些八叉树本身就是一个挑战,因此我们提出了三种数据并行技术来有效地构建它们,这可以显着将构建时间从几天或几周减少到使用商品集群的几小时。这种方法代表了向科学即服务技术的广泛转变,其中科学计算和存储服务变得更加紧密地交织在一起。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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