A Management Method of Multi-Granularity Dimensions for Spatiotemporal Data

Author:

Cao Wen1ORCID,Liu Wenhao1,Tong Xiaochong2,Wang Jianfei1,Peng Feilin3,Tian Yuzhen1,Zhu Jingwen1

Affiliation:

1. School of Geoscience and Technology, Zhengzhou University, Zhengzhou 450001, China

2. School of Geospatial Information, Information Engineering University, Zhengzhou 450001, China

3. Zhongke Yungu Technology Co., Ltd., Changsha 410000, China

Abstract

To understand the complex phenomena in social space and monitor the dynamic changes in people’s tracks, we need more cross-scale data. However, when we retrieve data, we often ignore the impact of multi-scale, resulting in incomplete results. To solve this problem, we proposed a management method of multi-granularity dimensions for spatiotemporal data. This method systematically described dimension granularity and the fuzzy caused by dimension granularity, and used multi-scale integer coding technology to organize and manage multi-granularity dimensions, and realized the integrity of the data query results according to the correlation between the different scale codes. We simulated the time and band data for the experiment. The experimental results showed that: (1) this method effectively solves the problem of incomplete query results of the intersection query method. (2) Compared with traditional string encoding, the query efficiency of multiscale integer encoding is twice as high. (3) The proportion of different dimension granularity has an impact on the query effect of multi-scale integer coding. When the proportion of fine-grained data is high, the advantage of multi-scale integer coding is greater.

Funder

Excellent Youth Foundation of Henan Municipal Natural Science Foundation

Management of Major Science and Technology Program of Henan Province

National Key R&D Plan of China

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Geography, Planning and Development

Reference34 articles.

1. Agricultural remote sensing big data: Management and applications;Huang;J. Integr. Agric.,2018

2. Crowdsourcing in Remote Sensing: A Review of Applications and Future Directions;Saralioglu;IEEE Geosci. Remote Sens. Mag.,2020

3. Big data: How do your data grow?;Clifford;Nature,2008

4. Spitzbart, B.D., Lynch, H.J., Turilli, M., and Jha, S. (2020). Practice and Experience in Advanced Research Computing, ACM.

5. Hidalgo, C. (2015). Why Information Grows, Penguin UK.

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