Performance analysis of physically-based (HEC-RAS, CADDIES) and AI-based (LSTM) flood models for two case studies

Megacities in developing countries are commonly affected by flooding events. The use of flood models can contribute to an evidence-based decision-making process. For a good representation, these models require physical data for catchment parameterization, and observed data for calibration and valida...

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Veröffentlicht in:Proceedings of the International Association of Hydrological Sciences 2024-04, Vol.386, p.41-46
Hauptverfasser: Batalini de Macedo, Marina, Mangukiya, Nikunj K., Fava, Maria Clara, Sharma, Ashutosh, Fray da Silva, Roberto, Agarwal, Ankit, Razzolini, Maria Tereza, Mendiondo, Eduardo Mario, Goel, Narendra K., Kurian, Mathew, Nardocci, Adelaide Cássia
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Sprache:eng
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Zusammenfassung:Megacities in developing countries are commonly affected by flooding events. The use of flood models can contribute to an evidence-based decision-making process. For a good representation, these models require physical data for catchment parameterization, and observed data for calibration and validation, which is often scarce. In this study, we analysed the performance results of physically-based (HEC-RAS, CADDIES) and AI-based (LSTM) flood models for two case studies: the Narmada basin in India and the Aricanduva catchment in Brazil. The models were evaluated for accuracy, interpretability, running time, and complexity.
ISSN:2199-899X
2199-8981
2199-899X
DOI:10.5194/piahs-386-41-2024