Multivariate Analysis and Machine Learning Approach for Mapping the Variability and Vulnerability of Urban Flooding: The Case of Tangier City, Morocco
Tarik Bouramtane,
Ilias Kacimi,
Khalil Bouramtane,
Maryam Aziz,
Shiny Abraham,
Khalid Omari,
Vincent Valles,
Marc Leblanc,
Nadia Kassou,
Omar El Beqqali,
Tarik Bahaj,
Moad Morarech,
Suzanne Yameogo,
Laurent Barbiero
Affiliations
Tarik Bouramtane
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Ilias Kacimi
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Khalil Bouramtane
Laboratory of Computer Science, Signals, Automation and Cognitivism (LISAC), Faculty of Sciences Dhar El Mahraz, University Sidi Mohammed Ben Abdellah, Fez 30000, Morocco
Maryam Aziz
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Shiny Abraham
Electrical and Computer Engineering Department, Seattle University, Seattle, WA 98122, USA
Khalid Omari
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Vincent Valles
UMR 1114 INRAE EMMAH, Hydrogeology Laboratory, Avignon University, 84916 Avignon, France
Marc Leblanc
UMR 1114 INRAE EMMAH, Hydrogeology Laboratory, Avignon University, 84916 Avignon, France
Nadia Kassou
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Omar El Beqqali
Laboratory of Computer Science, Signals, Automation and Cognitivism (LISAC), Faculty of Sciences Dhar El Mahraz, University Sidi Mohammed Ben Abdellah, Fez 30000, Morocco
Tarik Bahaj
Geoscience, Water and Environment Laboratory, Faculty of Sciences, Mohammed V University in Rabat, Avenue Ibn Batouta, Rabat 10100, Morocco
Moad Morarech
Laboratory of Applied and Marine Geosciences, Geotechnics and Geohazards (LR3G), Faculty of Sciences of Tetouan, University Abdelmalek Essaadi, Tetouan 93000, Morocco
Suzanne Yameogo
Earth Sciences Department, University of Ouagadougou, Ouagadougo 7021, Burkina Faso
Laurent Barbiero
IRD, CNRS, University of Toulouse, UMR 5563, Géoscience Environnement Toulouse, Observatoire Midi-Pyrénées, 14 Avenue Edouard Belin, 31400 Toulouse, France
Urban flooding is a complex natural hazard, driven by the interaction between several parameters related to urban development in a context of climate change, which makes it highly variable in space and time and challenging to predict. In this study, we apply a multivariate analysis method (PCA) and four machine learning algorithms to investigate and map the variability and vulnerability of urban floods in the city of Tangier, northern Morocco. Thirteen parameters that could potentially affect urban flooding were selected and divided into two categories: geo-environmental parameters and socio-economic parameters. PCA processing allowed identifying and classifying six principal components (PCs), totaling 73% of the initial information. The scores of the parameters on the PCs and the spatial distribution of the PCs allow to highlight the interconnection between the topographic properties and urban characteristics (population density and building density) as the main source of variability of flooding, followed by the relationship between the drainage (drainage density and distance to channels) and urban properties. All four machine learning algorithms show excellent performance in predicting urban flood vulnerability (ROC curve > 0.9). The Classifications and Regression Tree and Support Vector Machine models show the best prediction performance (ACC = 91.6%). Urban flood vulnerability maps highlight, on the one hand, low lands with a high drainage density and recent buildings, and on the other, higher, steep-sloping areas with old buildings and a high population density, as areas of high to very-high vulnerability.