Abstract

Abstract. To improve hydrological predictions, real-time measurements derived from traditional physical sensors are integrated within mathematic models. Recently, traditional sensors are being complemented with crowdsourced data (social sensors). Although measurements from social sensors can be low cost and more spatially distributed, other factors like spatial variability of citizen involvement, decreasing involvement over time, variable observations accuracy and feasibility for model assimilation play an important role in accurate flood predictions. Only a few studies have investigated the benefit of assimilating uncertain crowdsourced data in hydrological and hydraulic models. In this study, we investigate the usefulness of assimilating crowdsourced observations from a heterogeneous network of static physical, static social and dynamic social sensors. We assess improvements in the model prediction performance for different spatial–temporal scenarios of citizen involvement levels. To that end, we simulate an extreme flood event that occurred in the Bacchiglione catchment (Italy) in May 2013 using a semi-distributed hydrological model with the station at Ponte degli Angeli (Vicenza) as the prediction–validation point. A conceptual hydrological model is implemented by the Alto Adriatico Water Authority and it is used to estimate runoff from the different sub-catchments, while a hydraulic model is implemented to propagate the flow along the river reach. In both models, a Kalman filter is implemented to assimilate the crowdsourced observations. Synthetic crowdsourced observations are generated for either static social or dynamic social sensors because these measures were not available at the time of the study. We consider two sets of experiments: (i) assuming random probability of receiving crowdsourced observations and (ii) using theoretical scenarios of citizen motivations, and consequent involvement levels, based on population distribution. The results demonstrate the usefulness of integrating crowdsourced observations. First, the assimilation of crowdsourced observations located at upstream points of the Bacchiglione catchment ensure high model performance for high lead-time values, whereas observations at the outlet of the catchments provide good results for short lead times. Second, biased and inaccurate crowdsourced observations can significantly affect model results. Third, the theoretical scenario of citizens motivated by their feeling of belonging to a community of friends has the best effect in the model performance. However, flood prediction only improved when such small communities are located in the upstream portion of the Bacchiglione catchment. Finally, decreasing involvement over time leads to a reduction in model performance and consequently inaccurate flood forecasts.

Highlights

  • A challenge for water management is the reduction of risk related to extreme events such as floods

  • This study assesses the usefulness of assimilating crowdsourced observations coming from a network of distributed static physical, static social and dynamic social sensors, installed within the WeSenseIt Project in the Bacchiglione catchment, with the aim of advancing the understanding of the effect of public involvement on the improvements of flood models

  • In the complex process of assimilating of CS observations into water system models, many factors play an important role for correct flood estimation: types of social sensors, citizen involvement, decrease in involvement over time, types of hydrological and hydraulic models, spatial variability of citizen involvement, etc

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Summary

Introduction

A challenge for water management is the reduction of risk related to extreme events such as floods. Recent studies have demonstrated that water system models could improve their performances with the assimilation of observations from multiple sources, such as in situ and remote sensors, and other hydrologic variables such as soil moisture and streamflow (Aubert et al, 2003; McCabe et al, 2008; Pan et al, 2008; Lee et al, 2011; Montzka et al, 2012; Pipunic et al, 2013; López López et al, 2016; Rasmussen et al, 2015). Those studies have shown that data assimilation applications require specific, frequent and high-quality measurements

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