Deep Learning Hydrodynamic Forecasting for Flooded Region Assessment in Near-Real-Time (DL Hydro-FRAN) (2305.12052v2)
Abstract: Hydrodynamic flood modeling improves hydrologic and hydraulic prediction of storm events. However, the computationally intensive numerical solutions required for high-resolution hydrodynamics have historically prevented their implementation in near-real-time flood forecasting. This study examines whether several Deep Neural Network (DNN) architectures are suitable for optimizing hydrodynamic flood models. Several pluvial flooding events were simulated in a low-relief high-resolution urban environment using a 2D HEC-RAS hydrodynamic model. These simulations were assembled into a training set for the DNNs, which were then used to forecast flooding depths and velocities. The DNNs' forecasts were compared to the hydrodynamic flood models, and showed good agreement, with a median RMSE of around 2 mm for cell flooding depths in the study area. The DNNs also improved forecast computation time significantly, with the DNNs providing forecasts between 34.2 and 72.4 times faster than conventional hydrodynamic models. The study area showed little change between HEC-RAS' Full Momentum Equations and Diffusion Equations, however, important numerical stability considerations were discovered that impact equation selection and DNN architecture configuration. Overall, the results from this study show that DNNs can greatly optimize hydrodynamic flood modeling, and enable near-real-time hydrodynamic flood forecasting.
- Engineering National Academies of Sciences and Medicine “Framing the challenge of urban flooding in the United States” National Academies Press, 2019
- “Urbanization and climate change impacts on future urban flooding in Can Tho city, Vietnam” In Hydrology and Earth System Sciences 17.1, 2013, pp. 379–394 DOI: 10.5194/hess-17-379-2013
- P.E. Zope, T.I. Eldho and V. Jothiprakash “Impacts of land use-land cover change and urbanization on flooding: A case study of Oshiwara River Basin in Mumbai, India” In Catena 145 Elsevier B.V., 2016, pp. 142–154 DOI: 10.1016/j.catena.2016.06.009
- “Urbanization exacerbated the rainfall and flooding caused by hurricane Harvey in Houston” In Nature 563.7731 Springer US, 2018, pp. 384–388 DOI: 10.1038/s41586-018-0676-z
- “Trends in extreme rainfall and hydrogeometeorological disasters in the Metropolitan Area of São Paulo: a review” In Annals of the New York Academy of Sciences 1472.1 Wiley Online Library, 2020, pp. 5–20
- “Height Above the Nearest Drainage – a hydrologically relevant new terrain model” In Journal of Hydrology 404.1, 2011, pp. 13–29 DOI: https://doi.org/10.1016/j.jhydrol.2011.03.051
- “Terrain Analysis Enhancements to the Height Above Nearest Drainage Flood Inundation Mapping Method” In Water Resources Research 55.10, 2019, pp. 7983–8009 DOI: https://doi.org/10.1029/2019WR024837
- Lauren Lyn Williams and Melanie Lück-Vogel “Comparative assessment of the GIS based bathtub model and an enhanced bathtub model for coastal inundation” In Journal of Coastal Conservation 24.2 Springer, 2020, pp. 23
- Joko Sampurno, Randy Ardianto and Emmanuel Hanert “Integrated machine learning and GIS-based bathtub models to assess the future flood risk in the Kapuas River Delta, Indonesia” In Journal of Hydroinformatics 25.1 IWA Publishing, 2023, pp. 113–125
- “An integrated evaluation of the National Water Model (NWM)–Height Above Nearest Drainage (HAND) flood mapping methodology” In Natural Hazards and Earth System Sciences 19.11, 2019, pp. 2405–2420 DOI: 10.5194/nhess-19-2405-2019
- J Bootsma “Evaluating methods to assess the coastal flood hazard on a global scale: a comparative analysis between the Bathtub approach and the LISFLOOD-AC model”, 2022
- “Developments in large-scale coastal flood hazard mapping” In Natural Hazards and Earth System Sciences 16.8 Copernicus GmbH, 2016, pp. 1841–1853
- “Comparing the” bathtub method” with Mike 21 HD flow model for modelling storm surge inundation” In Ecologic Institute, Berlin, Germany, 2013
- “Enhancing the capability of a simple, computationally efficient, conceptual flood inundation model in hydrologically complex terrain” In Water Resources Management 33 Springer, 2019, pp. 831–845
- Emrah Yalcin “Assessing the impact of topography and land cover data resolutions on two-dimensional HEC-RAS hydrodynamic model simulations for urban flood hazard analysis” In Natural Hazards 101.3 Springer, 2020, pp. 995–1017
- Richard Courant, Kurt Friedrichs and Hans Lewy “On the partial difference equations of mathematical physics” In IBM journal of Research and Development 11.2 IBM, 1967, pp. 215–234
- “Streamflow prediction using an integrated methodology based on convolutional neural network and long short-term memory networks” In Scientific Reports 11.1 Nature Publishing Group UK London, 2021, pp. 17497
- Valeriy Gavrishchaka, Olga Senyukova and Mark Koepke “Synergy of physics-based reasoning and machine learning in biomedical applications: towards unlimited deep learning with limited data” In Advances in Physics: X 4.1 Taylor & Francis, 2019, pp. 1582361
- “Deep learning data-intelligence model based on adjusted forecasting window scale: application in daily streamflow simulation” In IEEE Access 8 IEEE, 2020, pp. 32632–32651
- “Improving streamflow prediction in the WRF-Hydro model with LSTM networks” In Journal of Hydrology 605 Elsevier, 2022, pp. 127297
- “Performance comparison of an LSTM-based deep learning model versus conventional machine learning algorithms for streamflow forecasting” In Water Resources Management 35.12 Springer, 2021, pp. 4167–4187
- Xuan-Hien Le, Hung Viet Ho and Giha Lee “River streamflow prediction using a deep neural network: a case study on the Red River, Vietnam” In Korean Journal of Agricultural Science 46.4 Institute of Agricultural Science, CNU, 2019, pp. 843–856
- “A comprehensive review of deep learning applications in hydrology and water resources” In Water Science and Technology 82.12, 2020, pp. 2635–2670 DOI: 10.2166/wst.2020.369
- “A VISION FOR THE DEVELOPMENT OF BENCHMARKS TO BRIDGE GEOSCIENCE AND DATA SCIENCE” In 17th International Workshop on Climate informatics URL: https://par.nsf.gov/biblio/10143795
- “A Review of Hydrodynamic and Machine Learning Approaches for Flood Inundation Modeling” In Water 15.3, 2023 DOI: 10.3390/w15030566
- Adhémar Jean-Claude Barré de Saint-Venant “Théorie du mouvement non-permanent des eaux, avec application aux crues des rivières et à l’introduction des marées dans leur lit” In Comptes rendus de l’Académie des Sciences de Paris 73.147-154, 1871, pp. 237–240
- Indiana Department of Natural Resources “The General Guidelines for the Hydrologic-Hydraulic Assessment of Floodplains in Indiana”, 2014, pp. 1–41
- FEMA “Find the Right HEC-RAS Model”
- “HEC-RAS River Analysis System Hydraulic Reference Manual Version 5.0” In Hydrologic Engineering Center, 2016, pp. 547
- “Application of surrogate artificial intelligent models for real-time flood routing” In Water and Environment Journal 27.4 Wiley Online Library, 2013, pp. 535–548
- “Well-balancing via flux globalization: Applications to shallow water equations with wet/dry fronts” In Journal of Scientific Computing 90 Springer, 2022, pp. 1–21
- “The shallow water equations: An example of hyperbolic system” In Monografıas de la Real Academia de Ciencias de Zaragoza 31.01, 2008
- Alexander Kurganov, Yongle Liu and Vladimir Zeitlin “Numerical dissipation switch for two-dimensional central-upwind schemes” In ESAIM: Mathematical Modelling and Numerical Analysis 55.3 EDP Sciences, 2021, pp. 713–734
- “Local characteristic decomposition based central-upwind scheme” In Journal of Computational Physics 473 Elsevier, 2023, pp. 111718
- Nima Ekhtari, Craig Glennie and Juan Carlos Fernandez-Diaz “Classification of airborne multispectral lidar point clouds for land cover mapping” In IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 11.6 IEEE, 2018, pp. 2068–2078
- “HEC-RAS HEC-RAS 2D User ’ s Manual”, 2021
- Christopher Goodell “Breaking the Hec-Ras Code: A User’s Guide to Automating Hec-Ras” h2ls., 2014
- “POINT PRECIPITATION FREQUENCY (PF) ESTIMATES WITH 90% CONFIDENCE INTERVALS AND SUPPLEMENTARY INFORMATION NOAA Atlas 14, Volume 11, Version 2, LAT 29.7207 LONG -95.3430” National OceanicAtmospheric Administration URL: https://hdsc.nws.noaa.gov/hdsc/pfds/pfds_map_cont.html?bkmrk=tx
- “TorchBNN V1.2 - Bayesian-Neural-Network-Pytorch” Python Software Foundation URL: https://pypi.org/project/torchbnn/
- “Phynet: Physics guided neural networks for particle drag force prediction in assembly” In Proceedings of the 2020 SIAM International Conference on Data Mining, 2020, pp. 559–567 SIAM
- Diederik P. Kingma and Jimmy Ba “Adam: A Method for Stochastic Optimization”, 2017 arXiv:1412.6980 [cs.LG]
- “Well-balanced positivity preserving central-upwind scheme for the shallow water system with friction terms” In International Journal for numerical methods in fluids 78.6 Wiley Online Library, 2015, pp. 355–383