Abstract
Floods are one of the most devastating types of worldwide disasters in terms of human, economic, and social losses. If authoritative data is scarce, or unavailable for some periods, other sources of information are required to improve streamflow estimation and early flood warnings. Georeferenced social media messages are increasingly being regarded as an alternative source of information for coping with flood risks. However, existing studies have mostly concentrated on the links between geo-social media activity and flooded areas. Thus, there is still a gap in research with regard to the use of social media as a proxy for rainfall-runoff estimations and flood forecasting. To address this, we propose using a transformation function that creates a proxy variable for rainfall by analysing geo-social media messages and rainfall measurements from authoritative sources, which are later incorporated within a hydrological model for streamflow estimation. We found that the combined use of official rainfall values with the social media proxy variable as input for the Probability Distributed Model (PDM), improved streamflow simulations for flood monitoring. The combination of authoritative sources and transformed geo-social media data during flood events achieved a 71% degree of accuracy and a 29% underestimation rate in a comparison made with real streamflow measurements. This is a significant improvement on the respective values of 39% and 58%, achieved when only authoritative data were used for the modelling. This result is clear evidence of the potential use of derived geo-social media data as a proxy for environmental variables for improving flood early-warning systems.
Highlights
Floods have been gradually increasing throughout the world, and causing 3 serious levels of human, economic and social losses
We propose using a transformation function that creates a proxy variable for rainfall by analysing geo-social media messages and rainfall measurements from authoritative sources, which are later incorporated within a hydrological model for streamflow estimation
We found that the combined use of official rainfall values with the social media proxy variable as input for the Probability Distributed Model (PDM), improved streamflow simulations for flood monitoring
Summary
Floods have been gradually increasing throughout the world, and causing 3 serious levels of human, economic and social losses. The advance of mobile telecommunications and the widespread use of smartphones and tablets allow people to act as human sensors, and generate volunteered geographic in[24] formation (Goodchild, 2007) They have been increasingly recognised and used as an important resource to support disaster management (Goodchild and Glennon, 2010; Horita et al, 2015). This paper differs from our previous studies (de Andrade et al, 2017) by going one step further than establishing a correlation between social media activity and rainfall: it examines the frequency of rainfall-related messages to define a data series of non-authoritative rainfall This data series can be used as input to enable a hydrological model to predict streamflow.
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