Spatio-Temporal Population Modelling for Enhanced Assessment of Urban Exposure to Flood Risk

被引:1
|
作者
Alan Smith
David Martin
Samantha Cockings
机构
[1] University of Southampton,Geography and Environment
来源
关键词
Spatio-temporal modelling; Population surface modelling; Natural hazards; Vulnerability; Urban exposure;
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学科分类号
摘要
There is a growing need for high resolution spatio-temporal population estimates which allow accurate assessment of population exposure to natural hazards. Current approaches to population estimation are usually limited either by the use of arbitrary administrative boundaries or insufficient resolution in the temporal dimension. The innovative approach proposed here combines the use of a spatio-temporal gridded population model with flood inundation data to estimate time-specific variations in population exposed to natural hazards. The approach is exemplified through an application centred on Southampton (UK) using Environment Agency flood map inundation data. Results demonstrate that large fluctuations occur over time in the population distribution within flood risk zones. Variations in the spatio-temporal distribution of population subgroups are explored. Analysis using GIS indicates a diurnal shift in exposure between fluvial and tidal flooding, particularly attributable to the movement of the working age population. This illustrates the improvements achievable to flood risk management as well as potential application to other natural hazard scenarios both within the UK and globally.
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页码:145 / 163
页数:18
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