Area and shape distortions in open-source discrete global grid systems

IF 4.2 3区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Big Earth Data Pub Date : 2022-07-03 DOI:10.1080/20964471.2022.2094926
A. Kmoch, I. Vasilyev, Holger Virro, E. Uuemaa
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引用次数: 8

Abstract

ABSTRACT A Discrete Global Grid System (DGGS) is a type of spatial reference system that tessellates the globe into many individual, evenly spaced, and well-aligned cells to encode location and, thus, can serve as a basis for data cube construction. This facilitates integration and aggregation of multi-resolution data from various sources to rapidly calculate spatial statistics. We calculated normalized area and compactness for cell geometries from 5 open-source DGGS implementations - Uber H3, Google S2, RiskAware OpenEAGGR, rHEALPix by Landcare Research New Zealand, and DGGRID by Southern Oregon University - to evaluate their suitability for a global-level statistical data cube. We conclude that the rHEALPix and OpenEAGGR and DGGRID ISEA-based DGGS definitions are most suitable for global statistics because they have the strongest guarantee of equal area preservation - where each cell covers almost exactly the same area on the globe. Uber H3 has the smallest shape distortions, but Uber H3 and Google S2 have the largest variations in cell area. However, they provide more mature software library functionalities. DGGRID provides excellent functionality to construct grids with desired geometric properties but as the only implementation does not provide functions for traversal and navigation within a grid after its construction.
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开放源代码离散全球网格系统中的区域和形状畸变
离散全球网格系统(DGGS)是一种空间参考系统,它将地球镶嵌成许多独立的、均匀间隔的、排列良好的单元来编码位置,因此可以作为数据立方体构建的基础。这有助于整合和聚合来自不同来源的多分辨率数据,以快速计算空间统计。我们计算了5个开源DGGS实现(Uber H3、Google S2、RiskAware OpenEAGGR、新西兰Landcare Research的rHEALPix和南俄勒冈大学的DGGRID)的单元几何形状的归一化面积和紧凑度,以评估它们对全球级统计数据立方体的适用性。我们得出结论,rHEALPix和OpenEAGGR以及DGGRID基于isea的DGGS定义最适合全局统计,因为它们具有最强的等面积保存保证-每个单元几乎完全覆盖全球相同的区域。Uber H3的形状失真最小,但Uber H3和Google S2的小区面积变化最大。然而,它们提供了更成熟的软件库功能。DGGRID为构建具有所需几何属性的网格提供了出色的功能,但作为唯一的实现,它在构建网格后不提供网格内的遍历和导航功能。
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来源期刊
Big Earth Data
Big Earth Data Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
7.40
自引率
10.00%
发文量
60
审稿时长
10 weeks
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