Deep learning methods for flood mapping: a review of existing applications and future research directions
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Published:2022-08-25
Issue:16
Volume:26
Page:4345-4378
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Bentivoglio RobertoORCID, Isufi Elvin, Jonkman Sebastian Nicolaas, Taormina Riccardo
Abstract
Abstract. Deep learning techniques have been increasingly used in flood management to overcome the limitations of accurate, yet slow, numerical models and to improve the results of traditional methods for flood mapping. In this paper, we review 58 recent publications to outline the state of the art of the field, identify knowledge gaps, and propose future research directions. The review focuses on the type of deep learning models used for various flood mapping applications, the flood types considered, the spatial scale of the studied events, and the data used for model development. The results show that models based on convolutional layers are usually more accurate, as they leverage inductive biases to better process the spatial characteristics of the flooding events. Models based on fully connected layers, instead, provide accurate results when coupled with other statistical models. Deep learning models showed increased accuracy when compared to traditional approaches and increased speed when compared to numerical methods. While there exist several applications in flood susceptibility, inundation, and hazard mapping, more work is needed to understand how deep learning can assist in real-time flood warning during an emergency and how it can be employed to estimate flood risk. A major challenge lies in developing deep learning models that can generalize to unseen case studies. Furthermore, all reviewed models and their outputs are deterministic, with limited considerations for uncertainties in outcomes and probabilistic predictions. The authors argue that these identified gaps can be addressed by exploiting recent fundamental advancements in deep learning or by taking inspiration from developments in other applied areas. Models based on graph neural networks and neural operators can work with arbitrarily structured data and thus should be capable of generalizing across different case studies and could account for complex interactions with the natural and built environment. Physics-based deep learning can be used to preserve the underlying physical equations resulting in more reliable speed-up alternatives for numerical models. Similarly, probabilistic models can be built by resorting to deep Gaussian processes or Bayesian neural networks.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
Reference184 articles.
1. Abdullah, M. F., Siraj, S., and Hodgett, R. E.: An Overview of Multi-Criteria
Decision Analysis (MCDA) Application in Managing Water-Related Disaster
Events: Analyzing 20 Years of Literature for Flood and Drought Events, Water,
13, 1358, https://doi.org/10.3390/w13101358, 2021. a 2. Ahmadlou, M., Al-Fugara, A., Al-Shabeeb, A., Arora, A., Al-Adamat, R., Pham,
Q., Al-Ansari, N., Linh, N., and Sajedi, H.: Flood susceptibility mapping and
assessment using a novel deep learning model combining multilayer perceptron
and autoencoder neural networks, J. Flood Risk Manage., 14, e12683,
https://doi.org/10.1111/jfr3.12683, 2021. a, b, c, d 3. Ahmed, N., Hoque, M. A.-A., Arabameri, A., Pal, S. C., Chakrabortty, R., and
Jui, J.: Flood susceptibility mapping in Brahmaputra floodplain of Bangladesh
using deep boost, deep learning neural network, and artificial neural
network, Geocarto Int., 1–22, https://doi.org/10.1080/10106049.2021.2005698, 2021. a, b, c, d, e 4. Amini, J.: A method for generating floodplain maps using IKONOS images and
DEMs, Int. J. Remote Sens., 31, 2441–2456,
https://doi.org/10.1080/01431160902929230, 2010. a, b, c, d 5. Ávila, A., Justino, F., Wilson, A., Bromwich, D., and Amorim, M.: Recent
precipitation trends, flash floods and landslides in southern Brazil,
Environ. Res. Lett., 11, 114029, https://doi.org/10.1088/1748-9326/11/11/114029,
2016. a
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