Quantitative Assessment of Future Land Use Changes' Impact on Flood Risk Components: Integration of Remote Sensing, Machine Learning, and Hydraulic Modeling

Author:

Gholami Farinaz1ORCID,Li Yue1,Zhang Junlong1,Nemati Alireza2

Affiliation:

1. Qingdao University

2. University of California Davis

Abstract

Abstract Flood is one of the most devastating natural hazards that has intensified due to land use land cover (LULC) changes in recent years. Flood risk assessment is crucial task for disaster management activities in flood-prone areas. In this study, we proposed a flood risk assessment framework that combines flood vulnerability, hazard, and damages under long-term LULC changes in the Tajan watershed, northern Iran. The research analyzed historical land use change trends and predicted changes up to 2040 by employing GIS, remote sensing, and land change modeling. The flood vulnerability map was generated using the Random Forest model, incorporating historical data from 332 flooded locations and 12 geophysical and anthropogenic flood factors under LULC change scenarios. The potential flood damage costs in residential and agricultural areas, considering long-term LULC changes, were calculated using the HEC-RAS hydraulic model and a global damage function. Results revealed that unplanned urban growth, agricultural expansion, and deforestation near the river downstream amplify flood risk in 2040. High and very high flood vulnerability areas would increase by 43% in 2040 due to human activities and LULC changes. Estimated annual flood damage for agriculture and built-up areas was projected to surge from $162 million to $376 million and $91 million to $220 million, respectively, considering 2021 and 2040 land use change scenarios in the flood-prone region. The research highlights the importance of land use planning in mitigating flood-associated risks, both in the studied area and other flood-prone regions.

Publisher

Research Square Platform LLC

Reference81 articles.

1. Prediction of spatial soil loss impacted by long-term land-use/land-cover change in a tropical watershed;Abdulkareem J;Geosci Front,2019

2. The effects of changing land use and flood hazard on poverty in coastal Bangladesh;Adnan MSG;Land Use Policy 99,2020

3. Flood hazard, vulnerability and risk assessment for different land use classes using a flow model;Al Baky MA;Earth Syst Environ,2020

4. Leveraging machine learning for predicting flash flood damage in the Southeast US;Alipour A;Environ Res Lett,2020

5. Integration of hard and soft supervised machine learning for flood susceptibility mapping;Andaryani S;J Environ Manage 291,2021

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