FLEMOflash: Flood Loss Estimation MOdels for companies and households affected by flash floods

Abstract: In light of the increasing losses from flash floods intensified by climate change, there is a critical need for improved loss models. Loss assessments predominantly focus on fluvial flood processes, leaving a significant gap in understanding the key drivers of flash floods and the effect o...

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Hauptverfasser: Singh, Apoorva (VerfasserIn) , Guntu, Ravi Kumar (VerfasserIn) , Sairam, Nivedita (VerfasserIn) , Shahi, Kasra Rafiezadeh (VerfasserIn) , Buch, Anna (VerfasserIn) , Fischer, Melanie (VerfasserIn) , Dhanya, Chandrika Thulaseedharan (VerfasserIn) , Kreibich, Heidi (VerfasserIn)
Dokumenttyp: Article (Journal) Kapitel/Artikel
Sprache:Englisch
Veröffentlicht: 22 Apr 2025
In: EGUsphere
Year: 2025, Pages: 1-20
DOI:10.5194/egusphere-2025-1512
Online-Zugang:Verlag, kostenfrei, Volltext: https://doi.org/10.5194/egusphere-2025-1512
Verlag, kostenfrei, Volltext: https://egusphere.copernicus.org/preprints/2025/egusphere-2025-1512/
Volltext
Verfasserangaben:Apoorva Singh, Ravi Kumar Guntu, Nivedita Sairam, Kasra Rafiezadeh Shahi, Anna Buch, Melanie Fischer, Chandrika Thulaseedharan Dhanya, and Heidi Kreibich
Beschreibung
Zusammenfassung:Abstract: In light of the increasing losses from flash floods intensified by climate change, there is a critical need for improved loss models. Loss assessments predominantly focus on fluvial flood processes, leaving a significant gap in understanding the key drivers of flash floods and the effect of preparedness on losses. To address these gaps, we introduce FLEMOflash;a novel multivariate probabilistic Flood Loss Estimation Model compilation for flash floods. The models are developed for companies and households based on survey data collected after flash flood events in 2002, 2016, and 2021 in Germany. FLEMOflash employs a data-driven feature selection approach, combining machine learning techniques (Elastic Net, Random Forest, XGBoost) to identify key drivers influencing flash flood losses and Bayesian networks to model probabilistic loss estimates, including uncertainty. Model-based findings show that in extreme hazard scenarios, high preparedness can reduce building losses by up to 47 % for large companies. Households who knew exactly what to do during high water depth were able to reduce their building losses by 77 % and contents losses by 55 %. Thus, FLEMOflash can support risk communication and management by providing reliable estimation of flash flood losses along with the loss differential considering the level of risk preparedness.
Beschreibung:Im Titel ist "flash" bei FLEMOflash tiefgestellt
Gesehen am 10.07.2025
Beschreibung:Online Resource
DOI:10.5194/egusphere-2025-1512