TL;DR
This paper introduces a deep learning framework for coastal flood prediction that performs well in low-data scenarios, using vision-based models and a curated dataset, to improve prediction accuracy and accessibility.
Contribution
The paper presents a novel deep vision-based flood prediction framework tailored for low-data environments, including new architectures and a curated benchmark dataset.
Findings
Deep models outperform traditional methods in flood prediction accuracy.
The proposed CNN architecture is resource-efficient and effective.
Curated dataset provides a valuable benchmark for future research.
Abstract
In light of growing threats posed by climate change in general and sea level rise (SLR) in particular, the necessity for computationally efficient means to estimate and analyze potential coastal flood hazards has become increasingly pressing. Data-driven supervised learning methods serve as promising candidates that can dramatically expedite the process, thereby eliminating the computational bottleneck associated with traditional physics-based hydrodynamic simulators. Yet, the development of accurate and reliable coastal flood prediction models, especially those based on Deep Learning (DL) techniques, has been plagued with two major issues: (1) the scarcity of training data and (2) the high-dimensional output required for detailed inundation mapping. To remove this barrier, we present a systematic framework for training high-fidelity Deep Vision-based coastal flood prediction models in…
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Taxonomy
MethodsFocus · Tanh Activation
