Spatially referenced synthetic households for high-resolution population modeling
This paper presents a methodology for generating spatially referenced synthetic households by combining population synthesis techniques for small area estimation with dasymetric population modeling. The methodology results in an output vector layer of households represented as points with unique str...
Autors principals: | , , |
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Format: | Working paper |
Idioma: | English |
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Environmental Change Institute, University of Oxford
2021
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author | Rubinyi, S Hall, JW Gussenbauer, J |
author_facet | Rubinyi, S Hall, JW Gussenbauer, J |
author_sort | Rubinyi, S |
collection | OXFORD |
description | This paper presents a methodology for generating spatially referenced synthetic households by combining population synthesis techniques for small area estimation with dasymetric population modeling. The methodology results in an output vector layer of households represented as points with unique structural and socioeconomic attributes which can be applied towards a better understanding of population dynamics, particularly those characteristics which are geographically influenced and may not conform to administrative boundaries linked to aggregated census statistics. To demonstrate the effectiveness of the methodology, the paper provides a case study in Dumuria Upazila, Bangladesh, where an independent household survey is used to validate the location of the synthetic households and associated socioeconomic attributes. The study found that 98 percent of all surveyed households were within 100 meters of at least one synthetic household and the median distance observed was only 18 meters. The study also found that the age distribution of synthetic populations was within five percent of the surveyed population for each of the five age bands considered. |
first_indexed | 2024-03-06T23:36:48Z |
format | Working paper |
id | oxford-uuid:6df15a85-0f15-4826-a5ad-f51c655950ee |
institution | University of Oxford |
language | English |
last_indexed | 2024-03-06T23:36:48Z |
publishDate | 2021 |
publisher | Environmental Change Institute, University of Oxford |
record_format | dspace |
spelling | oxford-uuid:6df15a85-0f15-4826-a5ad-f51c655950ee2022-03-26T19:21:03ZSpatially referenced synthetic households for high-resolution population modelingWorking paperhttp://purl.org/coar/resource_type/c_8042uuid:6df15a85-0f15-4826-a5ad-f51c655950eeEnglishSymplectic ElementsEnvironmental Change Institute, University of Oxford 2021Rubinyi, SHall, JWGussenbauer, JThis paper presents a methodology for generating spatially referenced synthetic households by combining population synthesis techniques for small area estimation with dasymetric population modeling. The methodology results in an output vector layer of households represented as points with unique structural and socioeconomic attributes which can be applied towards a better understanding of population dynamics, particularly those characteristics which are geographically influenced and may not conform to administrative boundaries linked to aggregated census statistics. To demonstrate the effectiveness of the methodology, the paper provides a case study in Dumuria Upazila, Bangladesh, where an independent household survey is used to validate the location of the synthetic households and associated socioeconomic attributes. The study found that 98 percent of all surveyed households were within 100 meters of at least one synthetic household and the median distance observed was only 18 meters. The study also found that the age distribution of synthetic populations was within five percent of the surveyed population for each of the five age bands considered. |
spellingShingle | Rubinyi, S Hall, JW Gussenbauer, J Spatially referenced synthetic households for high-resolution population modeling |
title | Spatially referenced synthetic households for high-resolution population modeling |
title_full | Spatially referenced synthetic households for high-resolution population modeling |
title_fullStr | Spatially referenced synthetic households for high-resolution population modeling |
title_full_unstemmed | Spatially referenced synthetic households for high-resolution population modeling |
title_short | Spatially referenced synthetic households for high-resolution population modeling |
title_sort | spatially referenced synthetic households for high resolution population modeling |
work_keys_str_mv | AT rubinyis spatiallyreferencedsynthetichouseholdsforhighresolutionpopulationmodeling AT halljw spatiallyreferencedsynthetichouseholdsforhighresolutionpopulationmodeling AT gussenbauerj spatiallyreferencedsynthetichouseholdsforhighresolutionpopulationmodeling |