A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction
Abstract Traditional flood prediction approaches either rely on numerical models, which are accurate but computationally intensive, or machine learning models, which are faster but limited by data availability. To address these limitations, we developed a Prediction-to-Map (P2M) framework that combi...
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| Main Authors: | , , , , , |
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| Format: | Article |
| Language: | English |
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Nature Portfolio
2025-07-01
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| Series: | npj Natural Hazards |
| Online Access: | https://doi.org/10.1038/s44304-025-00122-2 |
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| _version_ | 1849767168551419904 |
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| author | Daoyang Bao Z. George Xue Matthew Hiatt Kehui Xu Courtney K. Harris Jill C. Trepanier |
| author_facet | Daoyang Bao Z. George Xue Matthew Hiatt Kehui Xu Courtney K. Harris Jill C. Trepanier |
| author_sort | Daoyang Bao |
| collection | DOAJ |
| description | Abstract Traditional flood prediction approaches either rely on numerical models, which are accurate but computationally intensive, or machine learning models, which are faster but limited by data availability. To address these limitations, we developed a Prediction-to-Map (P2M) framework that combines the strengths of both methods. Trained on observed data and numerical model outputs, P2M delivers rapid, accurate spatial flood predictions. Applied to predict the flood event during Hurricane Nicholas (2021) near Galveston Bay, Texas, P2M produced flood depth maps that closely matched numerical simulations. Comparisons with observed data suggested P2M’s superior performance, as evidenced by higher R-squared and lower RMSE than the numerical model. Moreover, P2M demonstrated remarkable computational efficiency, producing a flood depth map with a 115,200-fold increase in speed. By achieving both faster speed and higher accuracy, this framework overcomes the trade-off in common surrogate models, providing a useful tool for rapid spatial flood prediction. |
| format | Article |
| id | doaj-art-cfdab6c3351945d88d5e3a7a3112ea65 |
| institution | DOAJ |
| issn | 2948-2100 |
| language | English |
| publishDate | 2025-07-01 |
| publisher | Nature Portfolio |
| record_format | Article |
| series | npj Natural Hazards |
| spelling | doaj-art-cfdab6c3351945d88d5e3a7a3112ea652025-08-20T03:04:18ZengNature Portfolionpj Natural Hazards2948-21002025-07-012111110.1038/s44304-025-00122-2A machine learning-based prediction-to-map framework for rapid and accurate spatial flood predictionDaoyang Bao0Z. George Xue1Matthew Hiatt2Kehui Xu3Courtney K. Harris4Jill C. Trepanier5Department of Oceanography and Coastal Sciences, Louisiana State UniversityDepartment of Oceanography and Coastal Sciences, Louisiana State UniversityDepartment of Oceanography and Coastal Sciences, Louisiana State UniversityDepartment of Oceanography and Coastal Sciences, Louisiana State UniversityVirginia Institute of Marine Science, William & MaryDepartment of Geography and Anthropology, Louisiana State UniversityAbstract Traditional flood prediction approaches either rely on numerical models, which are accurate but computationally intensive, or machine learning models, which are faster but limited by data availability. To address these limitations, we developed a Prediction-to-Map (P2M) framework that combines the strengths of both methods. Trained on observed data and numerical model outputs, P2M delivers rapid, accurate spatial flood predictions. Applied to predict the flood event during Hurricane Nicholas (2021) near Galveston Bay, Texas, P2M produced flood depth maps that closely matched numerical simulations. Comparisons with observed data suggested P2M’s superior performance, as evidenced by higher R-squared and lower RMSE than the numerical model. Moreover, P2M demonstrated remarkable computational efficiency, producing a flood depth map with a 115,200-fold increase in speed. By achieving both faster speed and higher accuracy, this framework overcomes the trade-off in common surrogate models, providing a useful tool for rapid spatial flood prediction.https://doi.org/10.1038/s44304-025-00122-2 |
| spellingShingle | Daoyang Bao Z. George Xue Matthew Hiatt Kehui Xu Courtney K. Harris Jill C. Trepanier A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction npj Natural Hazards |
| title | A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction |
| title_full | A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction |
| title_fullStr | A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction |
| title_full_unstemmed | A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction |
| title_short | A machine learning-based prediction-to-map framework for rapid and accurate spatial flood prediction |
| title_sort | machine learning based prediction to map framework for rapid and accurate spatial flood prediction |
| url | https://doi.org/10.1038/s44304-025-00122-2 |
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