Urban flood risk mapping using data-driven geospatial techniques for a flood-prone case area in Iran

Author:

Darabi Hamid1,Haghighi Ali Torabi1,Mohamadi Mohamad Ayob2,Rashidpour Mostafa2,Ziegler Alan D.3,Hekmatzadeh Ali Akbar4,Kløve Bjørn1

Affiliation:

1. Water, Energy and Environmental Engineering Research Unit, University of Oulu, P.O. Box 4300, FIN-90014 Oulu, Finland

2. Department of Watershed Management, Sari Agriculture Science and Natural Resources University, P.O. Box 737, Sari, Iran

3. Geography Department, National University of Singapore, Singapore

4. Department of Civil & Environmental Engineering, Shiraz University of Technology, Shiraz, Iran

Abstract

Abstract In an effort to improve tools for effective flood risk assessment, we applied machine learning algorithms to predict flood-prone areas in Amol city (Iran), a site with recent floods (2017–2018). An ensemble approach was then implemented to predict hazard probabilities using the best machine learning algorithms (boosted regression tree, multivariate adaptive regression spline, generalized linear model, and generalized additive model) based on a receiver operator characteristic-area under the curve (ROC-AUC) assessment. The algorithms were all trained and tested on 92 randomly selected points, information from a flood inundation survey, and geospatial predictor variables (precipitation, land use, elevation, slope percent, curve number, distance to river, distance to channel, and depth to groundwater). The ensemble model had 0.925 and 0.892 accuracy for training and testing data, respectively. We then created a vulnerability map from data on building density, building age, population density, and socio-economic conditions and assessed risk as a product of hazard and vulnerability. The results indicated that distance to channel, land use, and runoff generation were the most important factors associated with flood hazard, while population density and building density were the most important factors determining vulnerability. Areas of highest and lowest flood risks were identified, leading to recommendations on where to implement flood risk reduction measures to guide flood governance in Amol city.

Publisher

IWA Publishing

Subject

Water Science and Technology

Reference87 articles.

1. A systems approach to modeling catastrophic risk and insurability;Natural Hazards,2000

2. Impact of climate change on river flooding assessed with different spatial model resolutions;Journal of Hydrology,2005

3. Flash flood forecasting, warning and risk management: the HYDRATE project;Environmental Science & Policy,2011

4. Overview of random forest methodology and practical guidance with emphasis on computational biology and bioinformatics;Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery,2012

5. Random forests;Machine Learning,2001

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