Annually modelling built-settlements between remotely-sensed observations using relative changes in subnational populations and lights at night.
Built-settlements
Dasymetric modelling
Population
Random forest
Spatial growth
Urban features
Journal
Computers, environment and urban systems
ISSN: 0198-9715
Titre abrégé: Comput Environ Urban Syst
Pays: United States
ID NLM: 101092368
Informations de publication
Date de publication:
Mar 2020
Mar 2020
Historique:
entrez:
7
3
2020
pubmed:
7
3
2020
medline:
7
3
2020
Statut:
ppublish
Résumé
Mapping urban features/human built-settlement extents at the annual time step has a wide variety of applications in demography, public health, sustainable development, and many other fields. Recently, while more multitemporal urban features/human built-settlement datasets have become available, issues still exist in remotely-sensed imagery due to spatial and temporal coverage, adverse atmospheric conditions, and expenses involved in producing such datasets. Remotely-sensed annual time-series of urban/built-settlement extents therefore do not yet exist and cover more than specific local areas or city-based regions. Moreover, while a few high-resolution global datasets of urban/built-settlement extents exist for key years, the observed date often deviates many years from the assigned one. These challenges make it difficult to increase temporal coverage while maintaining high fidelity in the spatial resolution. Here we describe an interpolative and flexible modelling framework for producing annual built-settlement extents. We use a combined technique of random forest and spatio-temporal dasymetric modelling with open source subnational data to produce annual 100 m × 100 m resolution binary built-settlement datasets in four test countries located in varying environmental and developmental contexts for test periods of five-year gaps. We find that in the majority of years, across all study areas, the model correctly identified between 85 and 99% of pixels that transition to built-settlement. Additionally, with few exceptions, the model substantially out performed a model that gave every pixel equal chance of transitioning to built-settlement in each year. This modelling framework shows strong promise for filling gaps in cross-sectional urban features/built-settlement datasets derived from remotely-sensed imagery, provides a base upon which to create urban future/built-settlement extent projections, and enables further exploration of the relationships between urban/built-settlement area and population dynamics.
Identifiants
pubmed: 32139952
doi: 10.1016/j.compenvurbsys.2019.101444
pii: S0198-9715(19)30290-X
pii: 101444
pmc: PMC7043396
doi:
Types de publication
Journal Article
Langues
eng
Pagination
101444Informations de copyright
© 2019 The Authors.
Références
Int J Health Geogr. 2010 Sep 14;9:45
pubmed: 20840751
PLoS One. 2011;6(8):e23777
pubmed: 21876770
Popul Dev Rev. 2011;37(Suppl 1):34-54
pubmed: 21280364
Big Earth Data. 2019 Jun 18;3(2):108-139
pubmed: 31565697
Sci Data. 2015 Sep 01;2:150045
pubmed: 26347245
Proc Natl Acad Sci U S A. 2012 Oct 2;109(40):16083-8
pubmed: 22988086
Environ Manage. 2002 Sep;30(3):391-405
pubmed: 12148073
Vaccine. 2018 Mar 14;36(12):1583-1591
pubmed: 29454519
Lancet. 2011 Jan 29;377(9763):429-37
pubmed: 21269685
Int J Popul Geogr. 1997 Sep;3(3):203-25
pubmed: 12348289
Am J Epidemiol. 1978 Jan;107(1):71-6
pubmed: 623091
Int Migr Rev. 2010 Mar;44(1):227-264
pubmed: 26900199
Sci Data. 2016 Feb 16;3:160005
pubmed: 26881418
Demography. 1977 May;14(2):245-52
pubmed: 858435
World Health Popul. 2014;15(1):7-20
pubmed: 24702762
Appl Geogr. 2013 Oct;44:23-32
pubmed: 25152552
Elife. 2016 Nov 25;5:
pubmed: 27885988
Nature. 2018 Jan 18;553(7688):333-336
pubmed: 29320477
PLoS One. 2015 Feb 17;10(2):e0107042
pubmed: 25689585
J Public Health (Oxf). 2010 Jun;32(2):150-6
pubmed: 20501867
Int J Geogr Inf Sci. 1998 Oct-Nov;12(7):699-714
pubmed: 12294536
PLoS One. 2015 Mar 04;10(3):e0118432
pubmed: 25738806