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A Space-Time GIS Approach to Exploring Large Individual-based Spatiotemporal Datasets

机译:探索大型基于个体的时空数据集的时空GIS方法

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摘要

The increasing number of large individual-based spatiotemporal datasets in various research fields has challenged the GIS community to develop analysis tools that can efficiently help researchers explore the datasets in order to uncover useful information. Rooted in H?gerstrand's time geography, this study presents a generalized space-time path (GSTP) approach to facilitating visualization and exploration of spatiotemporal changes among individuals in a large dataset. The fundamental idea of this approach is to derive a small number of representative space-time paths (i.e. GSTPs) from the raw dataset by identifying spatial cluster centers of observed individuals at different time periods and connecting them according to their temporal sequence. A space-time GIS environment is developed to implement the GSTP concept. Different methods of handling temporal data aggregation and the creation of GSTPs are discussed in this article. Using a large individual-based migration history dataset, this study successfully develops an operational space-time GIS prototype in ESRI's ArcScene and ArcMap to provide a proof-of-concept study of this approach. This space-time GIS system demonstrates that the proposed GSTP approach can provide a useful exploratory analysis and geovisualization environment to help researchers effectively search for hidden patterns and trends in such datasets.
机译:在各个研究领域中,越来越多的大型基于个体的时空数据集对GIS社区提出了挑战,要求其开发可有效帮助研究人员探索数据集以发现有用信息的分析工具。这项研究源于H?gerstrand的时间地理学,提出了一种通用的时空路径(GSTP)方法,以促进可视化和探索大型数据集中个体的时空变化。这种方法的基本思想是,通过识别在不同时间段观察到的个体的空间聚类中心,并根据其时间顺序将它们连接起来,从原始数据集中导出少量代表性的时空路径(即GSTP)。开发了时空GIS环境以实现GSTP概念。本文讨论了处理时间数据聚合和创建GSTP的不同方法。使用大型的基于个人的迁移历史数据集,本研究成功地在ESRI的ArcScene和ArcMap中开发了可操作的时空GIS原型,以提供这种方法的概念验证研究。该时空GIS系统表明,提出的GSTP方法可以提供有用的探索性分析和地理可视化环境,以帮助研究人员有效地搜索此类数据集中的隐藏模式和趋势。

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