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Measuring the contribution of built-settlement data to global population mapping

Measuring the contribution of built-settlement data to global population mapping
Measuring the contribution of built-settlement data to global population mapping

Top-down population modelling has gained applied prominence in public health, planning, and sustainability applications at the global scale. These top-down population modelling methods often rely on remote-sensing (RS) derived representation of the built-environment and settlements as key predictive covariates. While these RS-derived data, which are global in extent, have become more advanced and more available, gaps in spatial and temporal coverage remain. These gaps have prompted the interpolation of the built-environment and settlements, but the utility of such interpolated data in further population modelling applications has garnered little research. Thus, our objective was to determine the utility of modelled built-settlement extents in a top-down population modelling application. Here we take modelled global built-settlement extents between 2000 and 2012, created using a spatio-temporal disaggregation of observed settlement growth. We then demonstrate the applied utility of such annually modelled settlement data within the application of annually modelling population, using random forest informed dasymetric disaggregations, across 172 countries and a 13-year period. We demonstrate that the modelled built-settlement data are consistently the 2nd most important covariate in predicting population density, behind annual lights at night, across the globe and across the study period. Further, we demonstrate that this modelled built-settlement data often provides more information than current annually available RS-derived data and last observed built-settlement extents.

2590-2911
Nieves, Jeremiah J.
2b5f2f25-afc0-4585-8531-dc2acc4b3511
Bondarenko, Maksym
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Kerr, David
0cb7f738-0bf6-463f-b1f1-b380c6b568b8
Ves, Nikolas
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Yetman, Greg
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Sinha, Parmanand
b975ee23-d2a2-46c9-bbaf-c0becfd6640d
Clarke, Donna J.
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Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Stevens, Forrest R.
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Gaughan, Andrea E
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Tatem, Andrew J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Nieves, Jeremiah J.
2b5f2f25-afc0-4585-8531-dc2acc4b3511
Bondarenko, Maksym
1cbea387-2a42-4061-9713-bbfdf4d11226
Kerr, David
0cb7f738-0bf6-463f-b1f1-b380c6b568b8
Ves, Nikolas
38e707a6-b20b-4c0a-b8d3-dd1e8c44aa30
Yetman, Greg
149630df-4250-4fc4-a4bf-72a7e60da962
Sinha, Parmanand
b975ee23-d2a2-46c9-bbaf-c0becfd6640d
Clarke, Donna J.
f5db577c-32e8-400f-8b1c-c7adf8b00e91
Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Stevens, Forrest R.
7c96c2ef-edac-41a1-be26-c4bc5b3256a6
Gaughan, Andrea E
395221c6-1091-4657-af7e-bd6cb93dbaf9
Tatem, Andrew J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e

Nieves, Jeremiah J., Bondarenko, Maksym, Kerr, David, Ves, Nikolas, Yetman, Greg, Sinha, Parmanand, Clarke, Donna J., Sorichetta, Alessandro, Stevens, Forrest R., Gaughan, Andrea E and Tatem, Andrew J. (2021) Measuring the contribution of built-settlement data to global population mapping. Social Sciences & Humanities Open, 3 (1), [100102]. (doi:10.1016/j.ssaho.2020.100102).

Record type: Article

Abstract

Top-down population modelling has gained applied prominence in public health, planning, and sustainability applications at the global scale. These top-down population modelling methods often rely on remote-sensing (RS) derived representation of the built-environment and settlements as key predictive covariates. While these RS-derived data, which are global in extent, have become more advanced and more available, gaps in spatial and temporal coverage remain. These gaps have prompted the interpolation of the built-environment and settlements, but the utility of such interpolated data in further population modelling applications has garnered little research. Thus, our objective was to determine the utility of modelled built-settlement extents in a top-down population modelling application. Here we take modelled global built-settlement extents between 2000 and 2012, created using a spatio-temporal disaggregation of observed settlement growth. We then demonstrate the applied utility of such annually modelled settlement data within the application of annually modelling population, using random forest informed dasymetric disaggregations, across 172 countries and a 13-year period. We demonstrate that the modelled built-settlement data are consistently the 2nd most important covariate in predicting population density, behind annual lights at night, across the globe and across the study period. Further, we demonstrate that this modelled built-settlement data often provides more information than current annually available RS-derived data and last observed built-settlement extents.

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Accepted/In Press date: 20 December 2020
Published date: 7 January 2021

Identifiers

Local EPrints ID: 456067
URI: http://eprints.soton.ac.uk/id/eprint/456067
ISSN: 2590-2911
PURE UUID: 756bcbe7-867a-482a-b909-582b0278fb19
ORCID for Maksym Bondarenko: ORCID iD orcid.org/0000-0003-4958-6551
ORCID for Alessandro Sorichetta: ORCID iD orcid.org/0000-0002-3576-5826
ORCID for Andrew J. Tatem: ORCID iD orcid.org/0000-0002-7270-941X

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Date deposited: 25 Apr 2022 16:49
Last modified: 17 Mar 2024 03:29

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Contributors

Author: Jeremiah J. Nieves
Author: David Kerr
Author: Nikolas Ves
Author: Greg Yetman
Author: Parmanand Sinha
Author: Donna J. Clarke
Author: Forrest R. Stevens
Author: Andrea E Gaughan
Author: Andrew J. Tatem ORCID iD

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