Inicio  /  Water  /  Vol: 9 Núm: 9 Par: 0 (2017)  /  Artículo
ARTÍCULO
TITULO

On the Influence of Input Data Quality to Flood Damage Estimation: The Performance of the INSYDE Model

Daniela Molinari    
Anna Rita Scorzini    

Resumen

IN-depth SYnthetic Model for Flood Damage Estimation (INSYDE) is a model for the estimation of flood damage to residential buildings at the micro-scale. This study investigates the sensitivity of INSYDE to the accuracy of input data. Starting from the knowledge of input parameters at the scale of individual buildings for a case study, the level of detail of input data is progressively downgraded until the condition in which a representative value is defined for all inputs at the census block scale. The analysis reveals that two conditions are required to limit the errors in damage estimation: the representativeness of representatives values with respect to micro-scale values and the local knowledge of the footprint area of the buildings, being the latter the main extensive variable adopted by INSYDE. Such a result allows for extending the usability of the model at the meso-scale, also in different countries, depending on the availability of aggregated building data.

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