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G-HBase: A High Performance Geographical Database Based on HBase

机译:G-HBase:基于HBase的高性能地理数据库

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With the recent explosion of geographic data generated by smartphones, sensors, and satellites, a data storage that can handle the massive volume of data and support high-computational spatial queries is becoming essential. Although key-value stores efficiently handle large-scale data, they are not equipped with effective functions for supporting geographic data. To solve this problem, in this paper, we present G-HBase, a high-performance geographical database based on HBase, a standard key-value store. To index geographic data, we first use Geohash as the rowkey in HBase. Then, we present a novel partitioning method, namely binary Geohash rectangle partitioning, to support spatial queries. Our extensive experiments on real datasets have demonstrated an improved performance with k nearest neighbors and range query in G-HBase when compared with SpatialHadoop, a state-of-the-art framework with native support for spatial data. We also observed that performance of spatial join in G-HBase is on par with SpatialHadoop and outperforms SJMR algorithm in HBase.
机译:随着智能手机,传感器和卫星生成的地理数据的爆炸式增长,一种能够处理海量数据并支持高计算空间查询的数据存储变得至关重要。尽管键值存储可以有效地处理大规模数据,但是它们没有配备有效的功能来支持地理数据。为了解决这个问题,本文提出了基于标准键值存储HBase的高性能地理数据库G-HBase。为了索引地理数据,我们首先使用Geohash作为HBase中的行键。然后,我们提出了一种新颖的分区方法,即二进制Geohash矩形分区,以支持空间查询。我们与真实数据集进行的广泛实验表明,与SpatialHadoop(具有空间数据原生支持的最新框架)相比,在G-HBase中使用k个最近邻居和范围查询可以提高性能。我们还观察到G-HBase中空间连接的性能与SpatialHadoop相当,并且优于HBase中的SJMR算法。

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