Probabilistic flood extent estimates from social media flood observations

The increasing number and severity of floods, driven by phenomena such as urbanization, deforestation, subsidence and climate change, create a growing need for accurate and timely flood maps. In this paper we present and evaluate a method to create deterministic and probabilistic flood maps from Twi...

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Veröffentlicht in:Natural hazards and earth system sciences 2017-05, Vol.17 (5), p.735-747
Hauptverfasser: Brouwer, Tom, Eilander, Dirk, van Loenen, Arnejan, Booij, Martijn J, Wijnberg, Kathelijne M, Verkade, Jan S, Wagemaker, Jurjen
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Sprache:eng
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Zusammenfassung:The increasing number and severity of floods, driven by phenomena such as urbanization, deforestation, subsidence and climate change, create a growing need for accurate and timely flood maps. In this paper we present and evaluate a method to create deterministic and probabilistic flood maps from Twitter messages that mention locations of flooding. A deterministic flood map created for the December 2015 flood in the city of York (UK) showed good performance (F(2) =  0.69; a statistic ranging from 0 to 1, with 1 expressing a perfect fit with validation data). The probabilistic flood maps we created showed that, in the York case study, the uncertainty in flood extent was mainly induced by errors in the precise locations of flood observations as derived from Twitter data. Errors in the terrain elevation data or in the parameters of the applied algorithm contributed less to flood extent uncertainty. Although these maps tended to overestimate the actual probability of flooding, they gave a reasonable representation of flood extent uncertainty in the area. This study illustrates that inherently uncertain data from social media can be used to derive information about flooding.
ISSN:1684-9981
1561-8633
1684-9981
DOI:10.5194/nhess-17-735-2017