A 31-year (1990–2020) global gridded population dataset generated by cluster analysis and statistical learning

Author:

Liu Luling,Cao XinORCID,Li ShijieORCID,Jie Na

Abstract

AbstractContinuously monitoring global population spatial dynamics is crucial for implementing effective policies related to sustainable development, including epidemiology, urban planning, and global inequality. However, existing global gridded population data products lack consistent population estimates, making them unsuitable for time-series analysis. To address this issue, this study designed a data fusion framework based on cluster analysis and statistical learning approaches, which led to the generation of a continuous global gridded population dataset (GlobPOP). The GlobPOP dataset was evaluated through two-tier spatial and temporal validation to demonstrate its accuracy and applicability. The spatial validation results show that the GlobPOP dataset is highly accurate. The temporal validation results also reveal that the GlobPOP dataset performs consistently well across eight representative countries and cities despite their unique population dynamics. With the availability of GlobPOP datasets in both population count and population density formats, researchers and policymakers can leverage the new dataset to conduct time-series analysis of the population and explore the spatial patterns of population development at global, national, and city levels.

Funder

National Natural Science Foundation of China

Publisher

Springer Science and Business Media LLC

Reference41 articles.

1. UN. World Population Prospects 2022. (United Nations, Department of Economic and Social Affairs, Population Division, 2022).

2. UN. Transforming our World: The 2030 Agenda for Sustainable Development. (United Nations, Department of Economic and Social Affairs, 2015).

3. Khavari, B., Sahlberg, A., Usher, W., Korkovelos, A. & Fuso Nerini, F. The effects of population aggregation in geospatial electrification planning. Energy Strategy Reviews. 38, 100752 (2021).

4. Leyk, S. et al. The spatial allocation of population: a review of large-scale gridded population data products and their fitness for use. ESSD. 11, 1385–1409 (2019).

5. Batista E Silva, F. et al. Uncovering temporal changes in Europe’s population density patterns using a data fusion approach. Nat Commun. 11, 4631 (2020).

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