How a Computational Method Can Help to Improve the Quality of River Flood Prediction by Simulation
Adriana Gaudiani (),
Emilio Luque,
Pablo García,
Mariano Re,
Marcelo Naiouf and
Armando Giusti
Additional contact information
Adriana Gaudiani: Universidad Nacional de General Sarmiento
Emilio Luque: Universidad Autónoma de Barcelona
Pablo García: Hydraulic Laboratory, National Institute of Water
Mariano Re: Hydraulic Laboratory, National Institute of Water
Marcelo Naiouf: Universidad Nacional de La Plata
Armando Giusti: Universidad Nacional de La Plata
Chapter Chapter 18 in Advances and New Trends in Environmental and Energy Informatics, 2016, pp 337-351 from Springer
Abstract:
Abstract High performance computing has become a fundamental technology essential for computer simulation. Modelling and computational simulation provide powerful tools which enable flood event forecasting. In order to reduce flood damage, we have developed a methodology focused on enhancing a flood simulator minimizing the number of errors between simulated and observed results by using a two-phase optimization methodology via simulation. In this research, we implemented this approach to find the best solution or adjusted set of simulator input parameters. As a result of this, we achieved an improvement of up to 14 % which, for example, represents a significant difference of 0.5–1 m of water level along whole Paraná River basin. In order to find the adjusted set of input parameters, we reduced the search space using a Monte Carlo + clustering K-Means method. Therefore, an exhaustive search over the reduced search space led us to get a “good solution”. In summary, we propose add an improvement process on the classical computer model output to improve model quality.
Keywords: Flood simulation; Simulator tuning; Optimization methodology; Parametric simulation (search for similar items in EconPapers)
Date: 2016
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Persistent link: https://EconPapers.repec.org/RePEc:spr:prochp:978-3-319-23455-7_18
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DOI: 10.1007/978-3-319-23455-7_18
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