Semi-automatic mapping of pre-census enumeration areas and population sampling frames

Abstract Enumeration Areas (EAs) are the operational geographic units for the collection and dissemination of census data and are often used as a national sampling frame for various types of surveys. In many poor or conflict-affected countries, EA demarcations are incomplete, outdated, or missing. E...

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Main Authors: Sarchil Qader, Veronique Lefebvre, Andrew Tatem, Utz Pape, Kristen Himelein, Amy Ninneman, Linus Bengtsson, Tomas Bird
Format: Article
Language:English
Published: Springer Nature 2021-01-01
Series:Humanities & Social Sciences Communications
Online Access:https://doi.org/10.1057/s41599-020-00670-0
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spelling doaj-a34634fd0dc446c59b8f73b5fef0751e2021-01-10T12:08:35ZengSpringer NatureHumanities & Social Sciences Communications2662-99922021-01-018111410.1057/s41599-020-00670-0Semi-automatic mapping of pre-census enumeration areas and population sampling framesSarchil Qader0Veronique Lefebvre1Andrew Tatem2Utz Pape3Kristen Himelein4Amy Ninneman5Linus Bengtsson6Tomas Bird7WorldPop, Geography and Environment, University of SouthamptonFlowminder FoundationWorldPop, Geography and Environment, University of SouthamptonWorld BankWorld BankFlowminder FoundationFlowminder FoundationFlowminder FoundationAbstract Enumeration Areas (EAs) are the operational geographic units for the collection and dissemination of census data and are often used as a national sampling frame for various types of surveys. In many poor or conflict-affected countries, EA demarcations are incomplete, outdated, or missing. Even for countries that are stable and prosperous, creating and updating EAs is one of the most challenging yet essential tasks in the preparation for a national census. Commonly, EAs are created by manually digitising small geographic units on high-resolution satellite imagery or physically walking the boundaries of units, both of which are highly time, cost, and labour intensive. In addition, creating EAs requires considering population and area size within each unit. This is an optimisation problem that can best be solved by a computer. Here, for the first time, we produce a semi-automatic mapping of pre-defined census EAs based on high-resolution gridded population and settlement datasets and using publicly available natural and administrative boundaries. We demonstrate the approach in generating rural EAs for Somalia where such mapping is not existent. In addition, we compare our automated approach against manually digitised EAs created in urban areas of Mogadishu and Hargeysa. Our semi-automatically generated EAs are consistent with standard EAs, including having identifiable boundaries for field teams to follow on the ground, and appropriate sizing and population for coverage by an enumerator. Furthermore, our semi-automated urban EAs have no gaps, in contrast, to manually drawn urban EAs. Our work shows the time, labour and cost-saving value of automated EA delineation and points to the potential for broadly available tools suitable for low-income and data-poor settings but applicable to potentially wider contexts.https://doi.org/10.1057/s41599-020-00670-0
collection DOAJ
language English
format Article
sources DOAJ
author Sarchil Qader
Veronique Lefebvre
Andrew Tatem
Utz Pape
Kristen Himelein
Amy Ninneman
Linus Bengtsson
Tomas Bird
spellingShingle Sarchil Qader
Veronique Lefebvre
Andrew Tatem
Utz Pape
Kristen Himelein
Amy Ninneman
Linus Bengtsson
Tomas Bird
Semi-automatic mapping of pre-census enumeration areas and population sampling frames
Humanities & Social Sciences Communications
author_facet Sarchil Qader
Veronique Lefebvre
Andrew Tatem
Utz Pape
Kristen Himelein
Amy Ninneman
Linus Bengtsson
Tomas Bird
author_sort Sarchil Qader
title Semi-automatic mapping of pre-census enumeration areas and population sampling frames
title_short Semi-automatic mapping of pre-census enumeration areas and population sampling frames
title_full Semi-automatic mapping of pre-census enumeration areas and population sampling frames
title_fullStr Semi-automatic mapping of pre-census enumeration areas and population sampling frames
title_full_unstemmed Semi-automatic mapping of pre-census enumeration areas and population sampling frames
title_sort semi-automatic mapping of pre-census enumeration areas and population sampling frames
publisher Springer Nature
series Humanities & Social Sciences Communications
issn 2662-9992
publishDate 2021-01-01
description Abstract Enumeration Areas (EAs) are the operational geographic units for the collection and dissemination of census data and are often used as a national sampling frame for various types of surveys. In many poor or conflict-affected countries, EA demarcations are incomplete, outdated, or missing. Even for countries that are stable and prosperous, creating and updating EAs is one of the most challenging yet essential tasks in the preparation for a national census. Commonly, EAs are created by manually digitising small geographic units on high-resolution satellite imagery or physically walking the boundaries of units, both of which are highly time, cost, and labour intensive. In addition, creating EAs requires considering population and area size within each unit. This is an optimisation problem that can best be solved by a computer. Here, for the first time, we produce a semi-automatic mapping of pre-defined census EAs based on high-resolution gridded population and settlement datasets and using publicly available natural and administrative boundaries. We demonstrate the approach in generating rural EAs for Somalia where such mapping is not existent. In addition, we compare our automated approach against manually digitised EAs created in urban areas of Mogadishu and Hargeysa. Our semi-automatically generated EAs are consistent with standard EAs, including having identifiable boundaries for field teams to follow on the ground, and appropriate sizing and population for coverage by an enumerator. Furthermore, our semi-automated urban EAs have no gaps, in contrast, to manually drawn urban EAs. Our work shows the time, labour and cost-saving value of automated EA delineation and points to the potential for broadly available tools suitable for low-income and data-poor settings but applicable to potentially wider contexts.
url https://doi.org/10.1057/s41599-020-00670-0
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