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Relative space-based GIS data model to analyze the group dynamics of moving objects

机译:相对空基GIS数据模型分析运动对象的组动力学

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摘要

The relative motion of moving objects is an essential research topic in geographical information science (GIScience), which supports the innovation of geodatabases, spatial indexing, and geospatial services. This analysis is very popular in the domains of urban governance, transportation engineering, logistics and geospatial information services for individuals or industrials. Importantly, data models of moving objects are one of the most crucial approaches to support the analysis for dynamic relative motion between moving objects, even in the age of big data and cloud computing. Traditional geographic information systems (GIS) usually organize moving objects as point objects in absolute coordinated space. The derivation of relative motions among moving objects is not efficient because of the additional geo-computation of transformation between absolute space and relative space. Therefore, current GISs require an innovative approach to directly store, analyze and interpret the relative relationships of moving objects to support their efficient analysis. This paper proposes a relative space-based GIS data model of moving objects (RSMO) to construct, operate and analyze moving objects’ relationships and introduces two algorithms (relationship querying and relative relationship dynamic pattern matching) to derive and analyze the dynamic relationships of moving objects. Three scenarios (epidemic spreading, tracker finding, and motion-trend derivation of nearby crowds) are implemented to demonstrate the feasibility of the proposed model. The experimental results indicates the execution times of the proposed model are approximately 5–50% those of the absolute GIS method for the same function of these three scenarios. It’s better computational performance of the proposed model when analyzing the relative relationships of moving objects than the absolute methods in a famous commercial GIS software based on this experimental results. The proposed approach fills the gap of traditional GIS and shows promise for relative space-based geo-computation, analysis and service.
机译:运动对象的相对运动是地理信息科学(GIScience)中必不可少的研究主题,它支持地理数据库,空间索引和地理空间服务的创新。这种分析在针对个人或工业的城市治理,运输工程,物流和地理空间信息服务领域非常受欢迎。重要的是,即使在大数据和云计算时代,运动对象的数据模型也是支持分析运动对象之间动态相对运动的最关键方法之一。传统的地理信息系统(GIS)通常将移动对象组织为绝对坐标空间中的点对象。由于绝对空间和相对空间之间转换的附加地理计算,移动对象之间的相对运动的推导效率不高。因此,当前的GIS需要一种创新的方法来直接存储,分析和解释运动对象的相对关系,以支持其有效的分析。本文提出了一种基于相对空基的移动物体GIS数据模型(RSMO)来构造,操作和分析移动物体的关系,并介绍了两种算法(关系查询和相对关系动态模式匹配)来导出和分析移动物体的动态关系。对象。实施了三种方案(流行病传播,跟踪器发现和附近人群的运动趋势推导),以证明所提出模型的可行性。实验结果表明,对于这三种情况的相同功能,所提出模型的执行时间约为绝对GIS方法的执行时间的5–50%。根据该实验结果,与著名的商业GIS软件中的绝对方法相比,在分析运动对象的相对关系时,所提出模型的计算性能更好。所提出的方法填补了传统GIS的空白,并显示了相对的基于空间的地理计算,分析和服务的希望。

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