Big Earth Data (Oct 2020)

STGI:a spatio-temporal grid index model for marine big data

  • Tengteng Qu,
  • Lizhe Wang,
  • Jian Yu,
  • Jining Yan,
  • Guilin Xu,
  • Meng Li,
  • Chengqi Cheng,
  • Kaihua Hou,
  • Bo Chen

DOI
https://doi.org/10.1080/20964471.2020.1844933
Journal volume & issue
Vol. 4, no. 4
pp. 435 – 450

Abstract

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Marine big data are characterized by a large amount and complex structures, which bring great challenges to data management and retrieval. Based on the GeoSOT Grid Code and the composite index structure of the MongoDB database, this paper proposes a spatio-temporal grid index model (STGI) for efficient optimized query of marine big data. A spatio-temporal secondary index is created on the spatial code and time code columns to build a composite index in the MongoDB database used for the storage of massive marine data. Multiple comparative experiments demonstrate that the retrieval efficiency adopting the STGI approach is increased by more than two to three times compared with other index models. Through theoretical analysis and experimental verification, the conclusion could be achieved that the STGI model is quite suitable for retrieving large-scale spatial data with low time frequency, such as marine big data.

Keywords