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Modelling changing population distributions: an example of the Kenyan Coast, 1979–2009

Modelling changing population distributions: an example of the Kenyan Coast, 1979–2009
Modelling changing population distributions: an example of the Kenyan Coast, 1979–2009
Large-scale gridded population datasets are usually produced for the year of input census data using a top-down approach and projected backward and forward in time using national growth rates. Such temporal projections do not include any subnational variation in population distribution trends and ignore changes in geographical covariates such as urban land cover changes. Improved predictions of population distribution changes over time require the use of a limited number of covariates that are time-invariant or temporally explicit. Here we make use of recently released multi-temporal high-resolution global settlement layers, historical census data and latest developments in population distribution modelling methods to reconstruct population distribution changes over 30 years across the Kenyan Coast. We explore the methodological challenges associated with the production of gridded population distribution time-series in data-scarce countries and show that trade-offs have to be found between spatial and temporal resolutions when selecting the best modelling approach. Strategies used to fill data gaps may vary according to the local context and the objective of the study. This work will hopefully serve as a benchmark for future developments of population distribution time-series that are increasingly required for population-at-risk estimations and spatial modelling in various fields.
1753-8947
1-13
Linard, Catherine
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Kabaria, Caroline W.
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Gilbert, Marius
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Tatem, Andrew J.
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Gaughan, Andrea E.
395221c6-1091-4657-af7e-bd6cb93dbaf9
Stevens, Forrest R.
7c96c2ef-edac-41a1-be26-c4bc5b3256a6
Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Noor, Abdisalan M.
06d32991-29fe-47a5-a62b-fe584c753414
Snow, Robert W.
7ff98228-6657-4b33-9793-b7f91a06c187
Linard, Catherine
231a1de7-72c2-4dc1-bc4e-ea30ed444856
Kabaria, Caroline W.
e7e88d56-b332-4932-8531-04c16e9492c7
Gilbert, Marius
c7b7a250-9ec8-47ea-8f08-3b847f0c576c
Tatem, Andrew J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Gaughan, Andrea E.
395221c6-1091-4657-af7e-bd6cb93dbaf9
Stevens, Forrest R.
7c96c2ef-edac-41a1-be26-c4bc5b3256a6
Sorichetta, Alessandro
c80d941b-a3f5-4a6d-9a19-e3eeba84443c
Noor, Abdisalan M.
06d32991-29fe-47a5-a62b-fe584c753414
Snow, Robert W.
7ff98228-6657-4b33-9793-b7f91a06c187

Linard, Catherine, Kabaria, Caroline W., Gilbert, Marius, Tatem, Andrew J., Gaughan, Andrea E., Stevens, Forrest R., Sorichetta, Alessandro, Noor, Abdisalan M. and Snow, Robert W. (2017) Modelling changing population distributions: an example of the Kenyan Coast, 1979–2009. International Journal of Digital Earth, 1-13. (doi:10.1080/17538947.2016.1275829).

Record type: Article

Abstract

Large-scale gridded population datasets are usually produced for the year of input census data using a top-down approach and projected backward and forward in time using national growth rates. Such temporal projections do not include any subnational variation in population distribution trends and ignore changes in geographical covariates such as urban land cover changes. Improved predictions of population distribution changes over time require the use of a limited number of covariates that are time-invariant or temporally explicit. Here we make use of recently released multi-temporal high-resolution global settlement layers, historical census data and latest developments in population distribution modelling methods to reconstruct population distribution changes over 30 years across the Kenyan Coast. We explore the methodological challenges associated with the production of gridded population distribution time-series in data-scarce countries and show that trade-offs have to be found between spatial and temporal resolutions when selecting the best modelling approach. Strategies used to fill data gaps may vary according to the local context and the objective of the study. This work will hopefully serve as a benchmark for future developments of population distribution time-series that are increasingly required for population-at-risk estimations and spatial modelling in various fields.

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Accepted/In Press date: 19 December 2016
e-pub ahead of print date: 11 January 2017
Organisations: Global Env Change & Earth Observation, WorldPop, Geography & Environment, Population, Health & Wellbeing (PHeW)

Identifiers

Local EPrints ID: 404587
URI: http://eprints.soton.ac.uk/id/eprint/404587
ISSN: 1753-8947
PURE UUID: 6d0af1bb-3992-4c53-afc6-0ddad51769d6
ORCID for Andrew J. Tatem: ORCID iD orcid.org/0000-0002-7270-941X
ORCID for Alessandro Sorichetta: ORCID iD orcid.org/0000-0002-3576-5826

Catalogue record

Date deposited: 12 Jan 2017 09:39
Last modified: 16 Mar 2024 04:11

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Contributors

Author: Catherine Linard
Author: Caroline W. Kabaria
Author: Marius Gilbert
Author: Andrew J. Tatem ORCID iD
Author: Andrea E. Gaughan
Author: Forrest R. Stevens
Author: Abdisalan M. Noor
Author: Robert W. Snow

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