Opportunities for multivariate analysis of open spatial datasets to characterize urban flooding risks

Conference Paper (2015)
Author(s)

Santiago Gaitan Sabogal (TU Delft - Water Resources)

J.A.E. ten Veldhuis (TU Delft - Sanitary Engineering)

Research Group
Water Resources
Copyright
© 2015 S. Gaitan Sabogal, Marie-claire ten Veldhuis
DOI related publication
https://doi.org/10.5194/piahs-370-9-2015
More Info
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Publication Year
2015
Language
English
Copyright
© 2015 S. Gaitan Sabogal, Marie-claire ten Veldhuis
Research Group
Water Resources
Volume number
370
Pages (from-to)
9-14
Reuse Rights

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Abstract

Cities worldwide are challenged by increasing urban flood risks. Precise and realistic measures are required to reduce flooding impacts. However, currently implemented sewer and topographic models do not provide realistic predictions of local flooding occurrence during heavy rain events. Assessing other factors such as spatially distributed rainfall, socioeconomic characteristics, and social sensing, may help to explain probability and impacts of urban flooding. Several spatial datasets have been recently made available in the Netherlands, including rainfall-related incident reports made by citizens, spatially distributed rain depths, semidistributed socioeconomic information, and buildings age. Inspecting the potential of this data to explain the occurrence of rainfall related incidents has not been done yet. Multivariate analysis tools for describing communities and environmental patterns have been previously developed and used in the field of study of ecology. The objective of this paper is to outline opportunities for these tools to explore urban flooding risks patterns in the mentioned datasets. To that end, a cluster analysis is performed. Results indicate that incidence of rainfall-related impacts is higher in areas characterized by older infrastructure and higher population density.