Full metadata
Title
Developing a cohesive space-time information framework for analyzing movement trajectories in real and simulated environments
Description
In today's world, unprecedented amounts of data of individual mobile objects have become more available due to advances in location aware technologies and services. Studying the spatio-temporal patterns, processes, and behavior of mobile objects is an important issue for extracting useful information and knowledge about mobile phenomena. Potential applications across a wide range of fields include urban and transportation planning, Location-Based Services, and logistics. This research is designed to contribute to the existing state-of-the-art in tracking and modeling mobile objects, specifically targeting three challenges in investigating spatio-temporal patterns and processes; 1) a lack of space-time analysis tools; 2) a lack of studies about empirical data analysis and context awareness of mobile objects; and 3) a lack of studies about how to evaluate and test agent-based models of complex mobile phenomena. Three studies are proposed to investigate these challenges; the first study develops an integrated data analysis toolkit for exploration of spatio-temporal patterns and processes of mobile objects; the second study investigates two movement behaviors, 1) theoretical random walks and 2) human movements in urban space collected by GPS; and, the third study contributes to the research challenge of evaluating the form and fit of Agent-Based Models of human movement in urban space. The main contribution of this work is the conceptualization and implementation of a Geographic Knowledge Discovery approach for extracting high-level knowledge from low-level datasets about mobile objects. This allows better understanding of space-time patterns and processes of mobile objects by revealing their complex movement behaviors, interactions, and collective behaviors. In detail, this research proposes a novel analytical framework that integrates time geography, trajectory data mining, and 3D volume visualization. In addition, a toolkit that utilizes the framework is developed and used for investigating theoretical and empirical datasets about mobile objects. The results showed that the framework and the toolkit demonstrate a great capability to identify and visualize clusters of various movement behaviors in space and time.
Date Created
2011
Contributors
- Nara, Atsushi (Author)
- Torrens, Paul M. (Thesis advisor)
- Myint, Soe W (Committee member)
- Kuby, Michael (Committee member)
- Griffin, William A. (Committee member)
- Arizona State University (Publisher)
Topical Subject
- Geography
- Geographic Information Science and Geodesy
- Animal behavior
- Geocomputation
- Geosimulation
- Geovisualization
- Spatio-Temporal Analysis Toolkit
- Spatio-Temporal Behavior
- Trajectory Data Mining
- Spatial analysis (Statistics)
- Geodatabases
- Global Positioning System
- Automatic tracking--Mathematical models.
- Automatic tracking
Resource Type
Extent
xxi, 331 p. : ill. (some col.)
Language
eng
Copyright Statement
In Copyright
Primary Member of
Peer-reviewed
No
Open Access
No
Handle
https://hdl.handle.net/2286/R.I.9514
Statement of Responsibility
by Atsushi Nara
Description Source
Retrieved on Oct. 12, 2012
Level of coding
full
Note
thesis
Partial requirement for: Ph.D., Arizona State University, 2011
bibliography
Includes bibliographical references (p. 305-332)
Field of study: Geography
System Created
- 2011-09-22 01:51:40
System Modified
- 2021-08-30 01:50:47
- 3 years 3 months ago
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