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A multi-resolution HEALPix data structure for spherically mapped point data

机译:球形映射点数据的多分辨率HEALPix数据结构

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摘要

Data describing entities with locations that are points on a sphere are described as spherically mapped. Several data structures designed for spherically mapped data have been developed. One of them, known as Hierarchical Equal Area iso-Latitude Pixelization (HEALPix), partitions the sphere into twelve diamond-shaped equal-area base cells and then recursively subdivides each cell into four diamond-shaped subcells, continuing to the desired level of resolution. Twelve quadtrees, one associated with each base cell, store the data records associated with that cell and its subcells.HEALPix has been used successfully for numerous applications, notably including cosmic microwave background data analysis. However, for applications involving sparse point data HEALPix has possible drawbacks, including inefficient memory utilization, overwriting of proximate points, and return of spurious points for certain queries.A multi-resolution variant of HEALPix specifically optimized for sparse point data was developed. The new data structure allows different areas of the sphere to be subdivided at different levels of resolution. It combines HEALPix positive features with the advantages of multi-resolution, including reduced memory requirements and improved query performance.An implementation of the new Multi-Resolution HEALPix (MRH) data structure was tested using spherically mapped data from four different scientific applications (warhead fragmentation trajectories, weather station locations, galaxy locations, and synthetic locations). Four types of range queries were applied to each data structure for each dataset. Compared to HEALPix, MRH used two to four orders of magnitude less memory for the same data, and on average its queries executed 72% faster.
机译:描述具有作为球体上的点的位置的实体的数据被描述为球面映射。已经开发了几种设计用于球形映射数据的数据结构。其中之一,称为等距等分层像素化分层(HEALPix),将球体划分为十二个菱形相等面积的基本像元,然后将每个像元递归地细分为四个菱形子像元,继续达到所需的分辨率。与每个基本单元相关联的十二个四叉树存储与该单元及其子单元相关联的数据记录。HEALPix已成功用于众多应用,特别是宇宙微波背景数据分析。但是,对于涉及稀疏点数据的应用程序,HEALPix具有可能的缺点,包括内存利用效率低下,邻近点的覆盖以及某些查询返回的虚假点。针对稀疏点数据进行了优化的HEALPix的多分辨率变体。新的数据结构允许以不同的分辨率细分球体的不同区域。它结合了HEALPix的积极特性和多分辨率的优势,包括减少了内存需求和提高了查询性能。使用来自四个不同科学应用程序的球形映射数据(弹头碎片)测试了新的Multi-Resolution HEALPix(MRH)数据结构的实现。轨迹,气象站位置,星系位置和合成位置)。将四种类型的范围查询应用于每个数据集的每个数据结构。与HEALPix相比,MRH对同一数据使用的内存减少了2-4个数量级,平均而言,其查询执行速度提高了72%。

著录项

  • 期刊名称 Heliyon
  • 作者单位
  • 年(卷),期 2017(3),6
  • 年度 2017
  • 页码 e00332
  • 总页数 40
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    Computer science;

    机译:计算机科学;
  • 入库时间 2022-08-17 12:08:07

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