Efficient Online Sharing of Geospatial Big Data Using NoSQL XML Databases

P. Amirian, A. Bassiri, A. Winstanley
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引用次数: 20

Abstract

Summary form only given: Today a huge amount of geospatial data is being created, collected and used more than ever before. The ever increasing observations and measurements of geo-sensor networks, satellite imageries, point clouds from laser scanning, geospatial data of Location Based Services (LBS) and location-based social networks has become a serious challenge for data management and analysis systems. Traditionally, Relational Database Management Systems (RDBMS) were used to manage and to some extent analyze the geospatial data. Nowadays these systems can be used in many scenarios but there are some situations when using these systems may not provide the required efficiency and effectiveness. More specifically when the geospatial data has high volume, high frequency of change (in both data content and data structure) and variety of structures, the conventional data storage systems cannot provide needed efficiency in online systems in terms of performance and scalability. In these situations, NoSQL solutions can provide the efficiency necessary for applications using geospatial data. This paper provides an overview of the characteristics of geospatial big data, possible solutions for managing and processing them. Then the paper provides an overview of the major types of NoSQL solutions, their advantages and disadvantages and the challenges they present in managing geospatial big data. Then the paper elaborates on serving geospatial data using standard geospatial web services with a NoSQL XML database as a backend.
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利用NoSQL XML数据库实现地理空间大数据的高效在线共享
摘要:今天,大量的地理空间数据正在被创建、收集和使用,比以往任何时候都要多。地理传感器网络、卫星图像、激光扫描点云、基于位置服务(LBS)的地理空间数据和基于位置的社交网络的不断增加的观测和测量已经成为数据管理和分析系统面临的严峻挑战。传统上,使用关系数据库管理系统(RDBMS)来管理和一定程度上分析地理空间数据。如今,这些系统可以用于许多场景,但在某些情况下,使用这些系统可能无法提供所需的效率和有效性。具体来说,当地理空间数据具有大容量、高变化频率(数据内容和数据结构)和多种结构时,传统的数据存储系统在性能和可扩展性方面无法提供在线系统所需的效率。在这些情况下,NoSQL解决方案可以为使用地理空间数据的应用程序提供必要的效率。本文概述了地理空间大数据的特点,以及管理和处理地理空间大数据的可能解决方案。然后,本文概述了NoSQL解决方案的主要类型,它们的优缺点以及它们在管理地理空间大数据方面面临的挑战。然后详细阐述了以NoSQL XML数据库为后端,使用标准地理空间web服务来提供地理空间数据。
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