面向海量遥感影像数据存储的NoSQL数据库性能研究

Yosra Hajjaji, I. Farah
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引用次数: 7

摘要

由于卫星遥感技术的发展,今天的传感器就像天空中的眼睛。因此,我们看到不同类型传感器的使用稳步发展,从机载和卫星平台产生大量的遥感图像,用于潜水员的应用,如;智慧城市、灾害管理、军事情报等。因此,卫星数据量的增长速度正在急剧增加。速度已经超过了每天1TB,未来肯定还会增加。然而,这些海量数据的存储变得至关重要。因此,如何有效地存储和管理它成为一个真正的挑战,因为传统的方式有密集的问题;它们昂贵且难以扩展。因此,我们需要一些可扩展的并行模型来实现遥感数据的存储和处理。本文描述了一种基于Apache Cassandra、Apache HBase、mongodb三种No SQL数据库的可扩展分布式海量遥感数据存储架构。在此基础上,提出了一种基于hadoop的大数据分布式并行管理框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance investigation of selected NoSQL databases for massive remote sensing image data storage
Today's sensors are like eyes in the sky, thanks to the growth of satellite remote sensing technologies. Therefore, we see a steady evolution of the usage of different types of sensor, from airborne and satellites platforms which are generating large quantities of remote sensing image for divers applications such as; smart city, disaster management, military intelligence and others. As a result, the rate of growth in the amount of data by satellite is increasing dramatically. The velocity has exceeded 1TB per day and it will certainly increase in the future. However, it becomes crucial for these huge volume data to be stored. So, how to store and manage it efficiently becomes a real challenge because traditional ways have intensive issues; they are expensive and difficult to extend. Therefore, we need some scalable and parallel models for remote sensing data storage and processing. In this paper, we describe a scalable and distributed architecture for massive remote sensing data storage based on three No SQL databases (Apache Cassandra, Apache HBase, MongoBD). Also, a Hadoop-based framework is proposed to manage the big remote sensing data in a distributed and parallel manner.
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