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Improving the accuracy of gridded population estimates in cities and slums to monitor SDG 11: evidence from a simulation study in Namibia

Improving the accuracy of gridded population estimates in cities and slums to monitor SDG 11: evidence from a simulation study in Namibia
Improving the accuracy of gridded population estimates in cities and slums to monitor SDG 11: evidence from a simulation study in Namibia
People living in slums and other deprived areas in low- and middle-income country (LMIC) cities are under-represented in censuses, and subsequently in “top-down” census-derived gridded population estimates. Modelled gridded population data are a unique source of disaggregated population information to calculate local development indicators such as the Sustainable Development Goals (SDGs). This study evaluates if, and how, “top-down” WorldPop Global (WPG) Unconstrained and Constrained datasets might be improved in a simulated LMIC urban population by incorporating slum population counts into model training. We found that the WPG-Unconstrained model, with or without slum training data, underestimated population in urban deprived areas while overestimating population in rural areas. The percent of population living in slums (SDG 11.1.1), for example, was estimated to be 20% or less compared to a “true” value of 29.5%. The WPG-Constrained model, which included building footprint auxiliary datasets, far more accurately estimated the population in all grid cells (including rural areas), and the inclusion of slum training data further improved estimates such that SDG 11.1.1 was estimated at 27.1% and 27.0%, respectively. Inclusion of building metrics and slum population training data in “top-down” gridded population models can substantially improve grid cell-level accuracy in both urban and rural areas.
Deprived areas, Global South, Informal settlements, Low and Middle Income Countries, Population model, Urban poverty mapping
0264-8377
Thomson, Dana R.
1ad13f81-f22e-4d89-a288-b05fb08b6c39
Stevens, Forrest R.
7c96c2ef-edac-41a1-be26-c4bc5b3256a6
Chen, Robert
a6b0e8d9-a493-43cb-b78f-c64ccb80d800
Yetman, Gregory
502f5c7d-0576-4c88-99a4-e8c771844257
Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Gaughan, Andrea E.
395221c6-1091-4657-af7e-bd6cb93dbaf9
Thomson, Dana R.
1ad13f81-f22e-4d89-a288-b05fb08b6c39
Stevens, Forrest R.
7c96c2ef-edac-41a1-be26-c4bc5b3256a6
Chen, Robert
a6b0e8d9-a493-43cb-b78f-c64ccb80d800
Yetman, Gregory
502f5c7d-0576-4c88-99a4-e8c771844257
Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Gaughan, Andrea E.
395221c6-1091-4657-af7e-bd6cb93dbaf9

Thomson, Dana R., Stevens, Forrest R., Chen, Robert, Yetman, Gregory, Sorichetta, Alessandro and Gaughan, Andrea E. (2022) Improving the accuracy of gridded population estimates in cities and slums to monitor SDG 11: evidence from a simulation study in Namibia. Land Use Policy, 123, [106392]. (doi:10.1016/j.landusepol.2022.106392).

Record type: Article

Abstract

People living in slums and other deprived areas in low- and middle-income country (LMIC) cities are under-represented in censuses, and subsequently in “top-down” census-derived gridded population estimates. Modelled gridded population data are a unique source of disaggregated population information to calculate local development indicators such as the Sustainable Development Goals (SDGs). This study evaluates if, and how, “top-down” WorldPop Global (WPG) Unconstrained and Constrained datasets might be improved in a simulated LMIC urban population by incorporating slum population counts into model training. We found that the WPG-Unconstrained model, with or without slum training data, underestimated population in urban deprived areas while overestimating population in rural areas. The percent of population living in slums (SDG 11.1.1), for example, was estimated to be 20% or less compared to a “true” value of 29.5%. The WPG-Constrained model, which included building footprint auxiliary datasets, far more accurately estimated the population in all grid cells (including rural areas), and the inclusion of slum training data further improved estimates such that SDG 11.1.1 was estimated at 27.1% and 27.0%, respectively. Inclusion of building metrics and slum population training data in “top-down” gridded population models can substantially improve grid cell-level accuracy in both urban and rural areas.

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More information

Accepted/In Press date: 5 October 2022
e-pub ahead of print date: 4 November 2022
Published date: 4 November 2022
Additional Information: Funding Information: This work was supported by the Bill & Melinda Gates Foundation , Seattle, WA [grant INV-008144 ].
Keywords: Deprived areas, Global South, Informal settlements, Low and Middle Income Countries, Population model, Urban poverty mapping

Identifiers

Local EPrints ID: 485182
URI: http://eprints.soton.ac.uk/id/eprint/485182
ISSN: 0264-8377
PURE UUID: 6e25d05e-532b-4200-b9c5-c52ae9b0e339
ORCID for Alessandro Sorichetta: ORCID iD orcid.org/0000-0002-3576-5826

Catalogue record

Date deposited: 30 Nov 2023 17:57
Last modified: 16 Mar 2024 23:28

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Contributors

Author: Dana R. Thomson
Author: Forrest R. Stevens
Author: Robert Chen
Author: Gregory Yetman
Author: Andrea E. Gaughan

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