Are OpenStreetMap building data useful for flood vulnerability modelling?
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Published:2021-02-16
Issue:2
Volume:21
Page:643-662
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ISSN:1684-9981
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Container-title:Natural Hazards and Earth System Sciences
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language:en
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Short-container-title:Nat. Hazards Earth Syst. Sci.
Author:
Cerri MarcoORCID, Steinhausen Max, Kreibich HeidiORCID, Schröter KaiORCID
Abstract
Abstract. Flood risk modelling aims to quantify the probability of flooding and the
resulting consequences for exposed elements. The assessment of flood
damage is a core task that requires the description of complex flood damage
processes including the influences of flooding intensity and vulnerability
characteristics. Multi-variable modelling approaches are better suited for
this purpose than simple stage–damage functions. However, multi-variable
flood vulnerability models require detailed input data and often have
problems in predicting damage for regions other than those for which they have
been developed. A transfer of vulnerability models usually results in a
drop of model predictive performance. Here we investigate the questions
as to whether data from the open-data source OpenStreetMap is suitable to model
flood vulnerability of residential buildings and whether the underlying
standardized data model is helpful for transferring models across regions. We
develop a new data set by calculating numerical spatial measures for
residential-building footprints and combining these variables with an
empirical data set of observed flood damage. From this data set random
forest regression models are learned using regional subsets and are tested
for predicting flood damage in other regions. This regional split-sample
validation approach reveals that the predictive performance of models based
on OpenStreetMap building geometry data is comparable to alternative
multi-variable models, which use comprehensive and detailed information
about preparedness, socio-economic status and other aspects of residential-building vulnerability. The transfer of these models for application in
other regions should include a test of model performance using independent
local flood data. Including numerical spatial measures based on
OpenStreetMap building footprints reduces model prediction errors (MAE – mean absolute error – by
20 % and MSE – mean squared error – by 25 %) and increases the reliability of model predictions
by a factor of 1.4 in terms of the hit rate when compared to a model that
uses only water depth as a predictor. This applies also when the models
are transferred to other regions which have not been used for model
learning. Further, our results show that using numerical spatial measures
derived from OpenStreetMap building footprints does not resolve all
problems of model transfer. Still, we conclude that these variables are
useful proxies for flood vulnerability modelling because these data are
consistent (i.e. input variables and underlying data model have the same
definition, format, units, etc.) and openly accessible and thus make it
easier and more cost-effective to transfer vulnerability models to other
regions.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
Reference89 articles.
1. Alfieri, L., Feyen, L., Salamon, P., Thielen, J., Bianchi, A., Dottori, F., and Burek, P.: Modelling the socio-economic impact of river floods in Europe, Nat. Hazards Earth Syst. Sci., 16, 1401–1411, https://doi.org/10.5194/nhess-16-1401-2016, 2016. a 2. Amadio, M., Scorzini, A. R., Carisi, F., Essenfelder, A. H., Domeneghetti, A., Mysiak, J., and Castellarin, A.: Testing empirical and synthetic flood damage models: the case of Italy, Nat. Hazards Earth Syst. Sci., 19, 661–678, https://doi.org/10.5194/nhess-19-661-2019, 2019. a 3. Amirebrahimi, S., Rajabifard, A., Mendis, P., and Ngo, T.: A framework for a
microscale flood damage assessment and visualization for a building using
BIM–GIS integration, Int. J. Digit. Earth, 9,
363–386, https://doi.org/10.1080/17538947.2015.1034201, 2016. a 4. Apel, H., Aronica, G. T., Kreibich, H., and Thieken, A.: Flood risk
analyses–how detailed do we need to be?, Nat. Hazards, 49, 79–98,
https://doi.org/10.1007/s11069-008-9277-8, 2009. a, b 5. Barrington-Leigh, C. and Millard-Ball, A.: The world’s user-generated road
map is more than 80 % complete, Plos One, 12, 1–20,
https://doi.org/10.1371/journal.pone.0180698, 2017. a, b
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