An improved Hilbert curve for parallel spatial data partitioning

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Abstract

A novel Hilbert-curve is introduced for parallel spatial data partitioning, with consideration of the huge-amount property of spatial information and the variable-length characteristic of vector data items. Based on the improved Hilbert curve, the algorithm can be designed to achieve almost-uniform spatial data partitioning among multiple disks in parallel spatial databases. Thus, the phenomenon of data imbalance can be significantly avoided and search and query efficiency can be enhanced.

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Meng, L., Huang, C., Zhao, C., & Lin, Z. (2007). An improved Hilbert curve for parallel spatial data partitioning. Geo-Spatial Information Science, 10(4), 282–286. https://doi.org/10.1007/s11806-007-0107-z

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