Unpublished conference/Abstract (Scientific congresses and symposiums)
Machine-learning based feature selection for a regional flood damage model
Rodriguez Castro, Daniela; Rafiezadeh Shahi, Kasra; Sairam, Nivedita et al.
2024EGU General Assembly 2024
Editorial reviewed
 

Files


Full Text
EGU24-15873-print.pdf
Publisher postprint (294.43 kB)
Request a copy

All documents in ORBi are protected by a user license.

Send to



Details



Keywords :
Floods; Damage modelling; Feature selection; Residential buildings
Abstract :
[en] After the 2021 floods in Europe, independent data collection initiatives were undertaken in the impacted areas of Belgium and Germany. The resulting datasets at residential building level contain valuable information on hazard characteristics, vulnerability of exposed assets, socio-economic factors and coping capacity of the inhabitants and the emergency services (i.e., emergency and precautionary measures). A transnational analysis of these datasets enhances our understanding of flood damage mechanisms. The data analysed resulted from 420, and 609 standardized surveys with private households affected by the 2021 floods in Belgium and Germany, respectively. Of these, 277 correspond to the area of Rhineland-Palatinate, and 332 were from North Rhine-Westphalia in Germany. A set of 64 potential damage influencing variables were harmonized across the datasets. The initial phase involved conducting descriptive statistics of the selected variables in three regions: the Vesdre valley in Belgium, the Ahr valley in Rhineland-Palatinate (Germany) and affected regions in North Rhine-Westphalia (Germany). In a second step, the most influential variables for predicting flood damage to residential buildings were identified by means of feature selection. This was conducted using the linear approaches multilinear with k-best predictors, and Elastic net regression as well as the non-linear techniques Random Forest and Conditional Inference Trees. Total building loss and the total content loss were used as target values. Based on different evaluation metrics, the most important variables describing absolute building damage and absolute contents damage in the three analyzed areas, were identified. Commonalities and differences in flood characteristics and damage in the three regions will be presented and interpreted in detail.
Research Center/Unit :
UEE - Urban and Environmental Engineering - ULiège
Disciplines :
Civil engineering
Author, co-author :
Rodriguez Castro, Daniela  ;  Université de Liège - ULiège > Urban and Environmental Engineering
Rafiezadeh Shahi, Kasra
Sairam, Nivedita 
Fischer, Melanie
Samprogna Mohor, Guilherme 
Thieken, Annegret 
Dewals, Benjamin  ;  Université de Liège - ULiège > Département ArGEnCo > Hydraulics in Environmental and Civil Engineering
Kreibich, Heidi 
Language :
English
Title :
Machine-learning based feature selection for a regional flood damage model
Publication date :
09 March 2024
Event name :
EGU General Assembly 2024
Event place :
Vienna, Austria
Event date :
14–19 Apr 2024
Audience :
International
Peer reviewed :
Editorial reviewed
Available on ORBi :
since 05 May 2024

Statistics


Number of views
44 (3 by ULiège)
Number of downloads
4 (2 by ULiège)

OpenAlex citations
 
0

Bibliography


Similar publications



Contact ORBi