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Efficient Spatial Big Data Storage and Query in HBase

机译:HBase中高效的空间大数据存储和查询

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Spatial data with geographical properties is one of the major workloads of cloud data storage system. When users query moves objects in high resolution geometric regions in mainstream cloud storage system, they are often transformed into queries in the range of data in sub-areas. This paper introduces an optimization scheme for the storage and processing of traffic spatial data. In spatial data storage, high-dimensional Hilbert space filling curve is used to divide and code spatial regions, and index tables are established. In spatial data query, adaptive aggregation algorithm is used to aggregate the reading of spatial data. In HDFS, a comprehensive evaluation index of nodes is proposed to optimize the selection of nodes for data replica placement. Finally, this paper uses real-world GPS positioning data for evaluation. The experimental results show that the optimization scheme can effectively reduce the time delay of spatial data query.
机译:具有地理属性的空间数据是云数据存储系统的主要工作量之一。当用户查询主流云存储系统中高分辨率几何区域中的移动对象时,它们通常会转换为子区域中数据范围内的查询。本文介绍了一种交通空间数据的存储和处理的优化方案。在空间数据存储中,使用高维希尔伯特空间填充曲线对空间区域进行划分和编码,并建立索引表。在空间数据查询中,自适应聚合算法用于聚合空间数据的读取。在HDFS中,提出了一个综合的节点评估指标,以优化用于数据副本放置的节点选择。最后,本文使用现实世界中的GPS定位数据进行评估。实验结果表明,该优化方案可以有效减少空间数据查询的时间延迟。

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