Climate Adaptation-Aware Flood Prediction for Coastal Cities Using Deep Learning
- URL: http://arxiv.org/abs/2510.26017v1
- Date: Wed, 29 Oct 2025 23:23:11 GMT
- Title: Climate Adaptation-Aware Flood Prediction for Coastal Cities Using Deep Learning
- Authors: Bilal Hassan, Areg Karapetyan, Aaron Chung Hin Chow, Samer Madanat,
- Abstract summary: Climate change and sea-level rise pose escalating threats to coastal cities.<n>Traditional physics-based hydrodynamic simulators are computationally expensive and impractical for city-scale coastal planning applications.<n>We develop a novel, lightweight Convolutional Neural Network (CNN)-based model designed to predict coastal flooding.
- Score: 1.8354875841169143
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Climate change and sea-level rise (SLR) pose escalating threats to coastal cities, intensifying the need for efficient and accurate methods to predict potential flood hazards. Traditional physics-based hydrodynamic simulators, although precise, are computationally expensive and impractical for city-scale coastal planning applications. Deep Learning (DL) techniques offer promising alternatives, however, they are often constrained by challenges such as data scarcity and high-dimensional output requirements. Leveraging a recently proposed vision-based, low-resource DL framework, we develop a novel, lightweight Convolutional Neural Network (CNN)-based model designed to predict coastal flooding under variable SLR projections and shoreline adaptation scenarios. Furthermore, we demonstrate the ability of the model to generalize across diverse geographical contexts by utilizing datasets from two distinct regions: Abu Dhabi and San Francisco. Our findings demonstrate that the proposed model significantly outperforms state-of-the-art methods, reducing the mean absolute error (MAE) in predicted flood depth maps on average by nearly 20%. These results highlight the potential of our approach to serve as a scalable and practical tool for coastal flood management, empowering decision-makers to develop effective mitigation strategies in response to the growing impacts of climate change. Project Page: https://caspiannet.github.io/
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