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Metrics for the comparative analysis of geospatial datasets with applications to high-resolution grid-based population data

机译:地理空间数据集比较分析的度量标准,适用于基于高分辨率网格的人口数据

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摘要

Geospatial data sciences have emerged as critical requirements for high-priority application solutions in diverse areas, including, but not limited to, the mitigation of natural and man-made disasters. Three sets of metrics, adopted or customized from geo-statistics, applied meteorology and signal processing, are tested in terms of their ability to evaluate geospatial datasets, specifically two population databases commonly used for disaster preparedness and consequence management. The two high-resolution, grid-based population datasets are the following: The LandScan dataset available from the Geographic Information Science and Technology (GIST) group at the Oak Ridge National Laboratory (ORNL), and the Gridded Population of the World (GPW) dataset available from the Center for International Earth Science Information Network (CIESIN) group at Columbia University. Case studies evaluate population data across the globe, specifically, the metropolitan areas of Washington DC, USA, Los-Angeles, USA, and Houston, USA, and London, UK, as well as the country of Iran. The geospatial metrics confirm that the two population datasets have significant differences, especially in the context of their utility for disaster readiness and mitigation. While this paper primarily focuses on grid based population datasets and disaster management applications, the sets of metrics developed here can be generalized to other geospatial datasets and applications. Future research needs to develop metrics for geospatial and temporal risks and associated uncertainties in the context of disaster management.
机译:地理空间数据科学已成为各种领域中高优先级应用程序解决方案的关键要求,这些领域包括但不限于减轻自然灾害和人为灾害。根据评估地理空间数据集的能力,测试了从地统计学,应用气象学和信号处理中采用或定制的三组度量标准,特别是两个通常用于备灾和后果管理的人口数据库。以下是两个基于网格的高分辨率人口数据集:可从橡树岭国家实验室(ORNL)的地理信息科学与技术(GIST)组获得的LandScan数据集,以及世界栅格化人口(GPW)可获得的LandScan数据集。数据集可从哥伦比亚大学国际地球科学信息网络中心(CIESIN)小组获得。案例研究评估了全球的人口数据,特别是美国华盛顿特区,美国洛杉矶,美国休斯顿,美国伦敦和英国伦敦等大城市地区以及伊朗国家。地理空间度量标准确认了这两个人口数据集具有显着差异,尤其是在它们对灾难准备和缓解的实用性方面。尽管本文主要关注基于网格的人口数据集和灾难管理应用程序,但此处开发的度量标准集可以推广到其他地理空间数据集和应用程序。未来的研究需要在灾害管理的背景下制定地理空间和时间风险以及相关不确定性的度量标准。

著录项

  • 来源
    《GeoJournal》 |2007年第2期|81-91|共11页
  • 作者单位

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road MS 6085 Oak Ridge TN 37831 USA;

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road Oak Ridge TN 37831 USA;

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road Oak Ridge TN 37831 USA;

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road Oak Ridge TN 37831 USA;

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road Oak Ridge TN 37831 USA;

    Computational Sciences and Engineering Oak Ridge National Laboratory 1 Bethel Valley Road Oak Ridge TN 37831 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Geospatial data; Population; Statistical evaluation; Disaster management;

    机译:地理空间数据;人口;统计评估;灾害管理;

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