Enhanced database support for location-based services

S. Ray, Rolando Blanco, Anil K. Goel
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引用次数: 8

Abstract

The ubiquity of GPS-enabled mobile devices and sensors have led to the explosive growth of time-stamped location data. Consequently Location-Based Services (LBS) has become a popular technology impacting various aspects of our lives. LBS applications are characterized by very high rate of location record updates, and many concurrent historic, present and predictive queries. Commercial LBS providers rely on relational databases to manage their data. However, traditional relational databases do not provide adequate support to meet the growing demands of many LBS systems. Moreover, existing indexing techniques that support historical queries are unable to sustain high update and query throughput as required by many LBS applications. To address this, we propose to exploit in-memory database techniques and present a few key ideas to support high performance commercial LBS. We also introduce a novel in-memory spatio-temporal index in which the spatial domain is organized as grid cells and for each grid cell partial temporal indexes are maintained for moving objects that visited the cell. The partial temporal indexes are implemented as compressed bitmaps. Using fast bitmap operations and utilizing parallelism rendered by multi-core systems, our system offers significantly better performance than traditional relational databases.
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增强了对基于位置的服务的数据库支持
支持gps的移动设备和传感器无处不在,这导致了时间戳位置数据的爆炸式增长。因此,基于位置的服务(LBS)已经成为一种流行的技术,影响着我们生活的各个方面。LBS应用程序的特点是非常高的位置记录更新率,以及许多并发的历史、当前和预测查询。商业LBS提供商依赖关系数据库来管理他们的数据。然而,传统的关系数据库不能提供足够的支持来满足许多LBS系统日益增长的需求。此外,支持历史查询的现有索引技术无法维持许多LBS应用程序所需的高更新和查询吞吐量。为了解决这个问题,我们建议利用内存数据库技术,并提出一些关键的想法来支持高性能的商业LBS。我们还引入了一种新的内存时空索引,其中空间域被组织为网格单元,对于每个网格单元,为访问该单元的移动对象维护部分时间索引。部分时间索引以压缩位图的形式实现。通过使用快速位图操作和多核系统的并行性,我们的系统提供了比传统关系数据库更好的性能。
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