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Feature Characterization in Scientific Datasets

机译:科学数据集中的特征表征

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We describe a preliminary implementation of a data analysis tool that can characterize features in large scientific datasets. There are two primary challenges in making such a tool both general and practical: first, the definition of an interesting feature changes from domain to domain; second, scientific data varies greatly in format and structure. Our solution uses a hierarchical feature ontology that contains a base layer of objects that violate basic continuity and smoothness assumptions, and layers of higher-order objects that violate the physical laws of specific domains. Our implementation exploits the metadata facilities of the SAF data access libraries in order to combine basic mathematics subroutines smoothly and handle data format translation problems automatically. We demonstrate the results on real-world data from deployed simulators.
机译:我们描述了一种数据分析工具的初步实现,可以在大型科学数据集中表征特征。制作普通和实用的工具有两个主要挑战:首先,将一个有趣的功能的定义从域变为域;其次,科学数据以格式和结构变化大。我们的解决方案使用分层特征本体,其中包含对象的基本层,违反基本连续性和平滑假设,以及违反特定域的物理定律的高阶对象的层。我们的实现利用SAF数据访问库的元数据设施,以便平滑地将基本数学子程序组合起来,并自动处理数据格式翻译问题。我们展示了从部署的模拟器的现实数据上的结果。

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