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Automated Web-based Analysis and Visualization of Spatiotemporal Data.

机译:基于Web的自动化时空数据分析和可视化。

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摘要

Most data are associated with a place, and many are also associated with a moment in time, a time interval, or another linked temporal component. Spatiotemporal data (i.e., data with elements of both space and time) can be used to assess movement or change over time in a particular location, an approach that is useful across many disciplines. However, spatiotemporal data structures can be quite complex, and the datasets very large. Although GIS software programs are capable of processing and analyzing spatial information, most contain no (or minimal) features for handling temporal information and have limited capability to deal with large, complex multidimensional spatiotemporal data. A related problem is how to best represent spatiotemporal data to support efficient processing, analysis, and visualization.;In the era of “big data,” efficient methods for analyzing and visualizing large quantities of spatiotemporal data have become increasingly necessary. Automated processing approaches, when made scalable and generalizable, can result in much greater efficiency in spatiotemporal data analysis. The growing popularity of web services and server-side processing methods can be leveraged to create systems for processing spatiotemporal data on the server, with delivery of output products to the client. In many cases, the client can be a standard web browser, providing a common platform from which users can interact with complex server-side processing systems to produce specific output data and visualizations. The rise of complex JavaScript libraries for creating interactive client-side tools has enabled the development of rich internet applications (RIA) that provide interactive data exploration capabilities and an enhanced user experience within the web browser.;Three projects involving time-series tsunami simulation data, potential human response in a tsunami evacuation scenario, and large sets of modeled time-series climate grids were conducted to explore automated web-based analysis, processing, and visualization of spatiotemporal data. Methods were developed for efficient handling of spatiotemporal data on the server side, as well as for interactive animation and visualization tools on the client side. The common web browser, particularly when combined with specialized server side code and client side RIA libraries, was found to be an effective platform for analysis and visualization tools that quickly interact with complex spatiotemporal data. Although specialized methods were developed to for each project, in most cases those methods can be generalized to other disciplines or computational domains where similar problem sets exist.
机译:大多数数据与一个地点相关联,许多数据也与某个时刻,一个时间间隔或另一个链接的时间分量相关联。时空数据(即具有时空元素的数据)可用于评估特定位置随时间的移动或变化,这种方法在许多学科中都非常有用。但是,时空数据结构可能非常复杂,并且数据集非常大。尽管GIS软件程序能够处理和分析空间信息,但是大多数软件不包含(或很少有)用于处理时间信息的功能,并且处理大型,复杂的多维时空数据的能力有限。一个相关的问题是如何最好地表示时空数据以支持有效的处理,分析和可视化。;在“大数据”时代,用于分析和可视化大量时空数据的有效方法变得越来越必要。自动化的处理方法具有可扩展性和通用性,可以提高时空数据分析的效率。可以利用Web服务和服务器端处理方法的日益普及来创建用于处理服务器上时空数据的系统,并将输出产品交付给客户端。在许多情况下,客户端可以是标准的Web浏览器,它提供了一个通用平台,用户可以从该平台与复杂的服务器端处理系统进行交互,以生成特定的输出数据和可视化效果。用于创建交互式客户端工具的复杂JavaScript库的兴起使富互联网应用程序(RIA)的开发成为可能,该应用程序提供了交互式数据探查功能并增强了Web浏览器中的用户体验。三个涉及时间序列海啸模拟数据的项目,在海啸疏散情况下潜在的人类反应以及大量建模的时间序列气候网格进行了探索,以探索基于网络的自动化时空数据分析,处理和可视化。开发了用于有效处理服务器端时空数据以及客户端交互动画和可视化工具的方法。通用的Web浏览器,特别是与专门的服务器端代码和客户端RIA库结合使用时,被发现是有效的分析和可视化工具平台,可以快速与复杂的时空数据进行交互。尽管为每个项目开发了专门的方法,但是在大多数情况下,这些方法可以推广到存在类似问题集的其他学科或计算领域。

著录项

  • 作者

    Keon, Dylan B.;

  • 作者单位

    Oregon State University.;

  • 授予单位 Oregon State University.;
  • 学科 Geography.;Web Studies.;Computer Science.;Geodesy.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 351 p.
  • 总页数 351
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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