Spatio-temporal data warehouses using an adaptive cell-based approach
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摘要
Most of the framework for supporting OLAP operations over immense amounts of spatio-temporal data is based on multi-tree structures. The multi-tree frameworks, however, are hardly applicable to spatio-temporal OLAP in practice, due mainly to high management costs and low query efficiency. To overcome the limitations of such multi-tree frameworks, we propose a new approach called ST-Cube (spatio-temporal cube), which is an adaptive cell-based, total-ordered and prefix-summed cube for spatio-temporal data warehouses. Our extensive performance studies show that the ST-Cube requires less space and achieves higher query performance than multi-tree frameworks, under various operational conditions.
论文关键词:Spatio-temporal data warehouses,Aggregation query,Hilbert curve,Prefix-sum,ST-Cube
论文评审过程:Received 20 July 2005, Accepted 17 August 2005, Available online 13 September 2005.
论文官网地址:https://doi.org/10.1016/j.datak.2005.08.001