大数据
计算机科学
数据挖掘
代表(政治)
比例(比率)
地理信息系统
空间分析
时空
数据模型(GIS)
体积热力学
时空数据库
计算
地理
地图学
遥感
人工智能
算法
数据库设计
政治
数据库调整
物理
工程类
政治学
化学工程
视图
法学
量子力学
作者
Bi Yu Chen,Hui Yuan,Qingquan Li,Shih‐Lung Shaw,William H. K. Lam,Xiaoling Chen
出处
期刊:International journal of geographical information systems
[Informa]
日期:2015-11-05
卷期号:30 (6): 1041-1071
被引量:85
标识
DOI:10.1080/13658816.2015.1104317
摘要
There has been a resurgence of interest in time geography studies due to emerging spatiotemporal big data in urban environments. However, the rapid increase in the volume, diversity, and intensity of spatiotemporal data poses a significant challenge with respect to the representation and computation of time geographic entities and relations in road networks. To address this challenge, a spatiotemporal data model is proposed in this article. The proposed spatiotemporal data model is based on a compressed linear reference (CLR) technique to transform network time geographic entities in three-dimensional (3D) (x, y, t) space to two-dimensional (2D) CLR space. Using the proposed spatiotemporal data model, network time geographic entities can be stored and managed in classical spatial databases. Efficient spatial operations and index structures can be directly utilized to implement spatiotemporal operations and queries for network time geographic entities in CLR space. To validate the proposed spatiotemporal data model, a prototype system is developed using existing 2D GIS techniques. A case study is performed using large-scale datasets of space-time paths and prisms. The case study indicates that the proposed spatiotemporal data model is effective and efficient for storing, managing, and querying large-scale datasets of network time geographic entities.
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