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Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR

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Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR. / Mansour, S.; Alahmadi, M.; Darby, S. et al.
In: International Journal of Disaster Risk Reduction, Vol. 93, 103761, 31.07.2023.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Mansour, S, Alahmadi, M, Darby, S, Leyland, J & Atkinson, PM 2023, 'Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR', International Journal of Disaster Risk Reduction, vol. 93, 103761. https://doi.org/10.1016/j.ijdrr.2023.103761

APA

Mansour, S., Alahmadi, M., Darby, S., Leyland, J., & Atkinson, P. M. (2023). Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR. International Journal of Disaster Risk Reduction, 93, Article 103761. https://doi.org/10.1016/j.ijdrr.2023.103761

Vancouver

Mansour S, Alahmadi M, Darby S, Leyland J, Atkinson PM. Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR. International Journal of Disaster Risk Reduction. 2023 Jul 31;93:103761. Epub 2023 May 25. doi: 10.1016/j.ijdrr.2023.103761

Author

Mansour, S. ; Alahmadi, M. ; Darby, S. et al. / Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR. In: International Journal of Disaster Risk Reduction. 2023 ; Vol. 93.

Bibtex

@article{7c65ab2517cc40f99fab22e49104bdab,
title = "Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR",
abstract = "Tropical cyclones are a highly destructive natural hazard that can cause extensive damage to assets and loss of life. This is especially true for the many coastal cities and communities that lie in their paths. Despite their significance globally, research on post-cyclone recovery rates has generally been qualitative and, crucially, has lacked spatial definition. Here, we used freely available satellite nighttime light data to model spatially the rate of post-cyclone recovery and selected several spatial covariates (socioeconomic, environmental and topographical factors) to explain the rate of recovery. We fitted three types of regression model to characterize the relationship between rate of recovery and the selected covariates; one global model (linear regression) and two local models (geographically weighted regression, GWR, and multiscale geographically weighted regression, MGWR). Despite the rate of recovery being a challenging variable to predict, the two local models explained 42% (GWR) and 51% (MGWR) of the variation, compared to the global linear model which explained only 13% of the variation. Importantly, the local models revealed which covariates were explanatory at which places; information that could be crucial to policy-makers and local decision-makers in relation to disaster preparedness and recovery planning.",
keywords = "Post-Shaheen cyclone recovery, GIS, MGWR, Night time light NTL Data, Community resilience",
author = "S. Mansour and M. Alahmadi and S. Darby and J. Leyland and P.M. Atkinson",
year = "2023",
month = jul,
day = "31",
doi = "10.1016/j.ijdrr.2023.103761",
language = "English",
volume = "93",
journal = "International Journal of Disaster Risk Reduction",
issn = "2212-4209",
publisher = "Elsevier Ltd",

}

RIS

TY - JOUR

T1 - Geospatial modelling of post-cyclone Shaheen recovery using nighttime light data and MGWR

AU - Mansour, S.

AU - Alahmadi, M.

AU - Darby, S.

AU - Leyland, J.

AU - Atkinson, P.M.

PY - 2023/7/31

Y1 - 2023/7/31

N2 - Tropical cyclones are a highly destructive natural hazard that can cause extensive damage to assets and loss of life. This is especially true for the many coastal cities and communities that lie in their paths. Despite their significance globally, research on post-cyclone recovery rates has generally been qualitative and, crucially, has lacked spatial definition. Here, we used freely available satellite nighttime light data to model spatially the rate of post-cyclone recovery and selected several spatial covariates (socioeconomic, environmental and topographical factors) to explain the rate of recovery. We fitted three types of regression model to characterize the relationship between rate of recovery and the selected covariates; one global model (linear regression) and two local models (geographically weighted regression, GWR, and multiscale geographically weighted regression, MGWR). Despite the rate of recovery being a challenging variable to predict, the two local models explained 42% (GWR) and 51% (MGWR) of the variation, compared to the global linear model which explained only 13% of the variation. Importantly, the local models revealed which covariates were explanatory at which places; information that could be crucial to policy-makers and local decision-makers in relation to disaster preparedness and recovery planning.

AB - Tropical cyclones are a highly destructive natural hazard that can cause extensive damage to assets and loss of life. This is especially true for the many coastal cities and communities that lie in their paths. Despite their significance globally, research on post-cyclone recovery rates has generally been qualitative and, crucially, has lacked spatial definition. Here, we used freely available satellite nighttime light data to model spatially the rate of post-cyclone recovery and selected several spatial covariates (socioeconomic, environmental and topographical factors) to explain the rate of recovery. We fitted three types of regression model to characterize the relationship between rate of recovery and the selected covariates; one global model (linear regression) and two local models (geographically weighted regression, GWR, and multiscale geographically weighted regression, MGWR). Despite the rate of recovery being a challenging variable to predict, the two local models explained 42% (GWR) and 51% (MGWR) of the variation, compared to the global linear model which explained only 13% of the variation. Importantly, the local models revealed which covariates were explanatory at which places; information that could be crucial to policy-makers and local decision-makers in relation to disaster preparedness and recovery planning.

KW - Post-Shaheen cyclone recovery

KW - GIS

KW - MGWR

KW - Night time light NTL Data

KW - Community resilience

U2 - 10.1016/j.ijdrr.2023.103761

DO - 10.1016/j.ijdrr.2023.103761

M3 - Journal article

VL - 93

JO - International Journal of Disaster Risk Reduction

JF - International Journal of Disaster Risk Reduction

SN - 2212-4209

M1 - 103761

ER -