Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning

Abstract Rapid delineation of flash flood extents is critical to mobilize emergency resources and to manage evacuations, thereby saving lives and property. Machine learning (ML) provides a promising solution for this rapid delineation, offering a computationally efficient alternative to high‐resolut...

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Main Authors: Mark S. Bartlett, Jared VanBlitterswyk, Martha Farella, Jinshu Li, Curtis Smith, Anthony J. Parolari, Lalitha Krishnamoorthy, Assaad Mrad
Format: Article
Language:English
Published: Wiley 2025-04-01
Series:Water Resources Research
Subjects:
Online Access:https://doi.org/10.1029/2024WR039086
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author Mark S. Bartlett
Jared VanBlitterswyk
Martha Farella
Jinshu Li
Curtis Smith
Anthony J. Parolari
Lalitha Krishnamoorthy
Assaad Mrad
author_facet Mark S. Bartlett
Jared VanBlitterswyk
Martha Farella
Jinshu Li
Curtis Smith
Anthony J. Parolari
Lalitha Krishnamoorthy
Assaad Mrad
author_sort Mark S. Bartlett
collection DOAJ
description Abstract Rapid delineation of flash flood extents is critical to mobilize emergency resources and to manage evacuations, thereby saving lives and property. Machine learning (ML) provides a promising solution for this rapid delineation, offering a computationally efficient alternative to high‐resolution 2D flood models. However, even when trained on diverse geographic regions, ML models typically require retraining to perform well in new locations, and therefore often fail to generalize to never‐before‐seen conditions. To improve ML generalization, we apply Buckingham Π theorem to derive dimensionless terms across multiple spatial scales. These multiscale Π terms represent ratios of the relevant physical quantities governing the flooding process. Since the scaling laws of these dimensionless Π terms encode process similarity across physical scales, these Π terms enhance ML transferability to unseen locations. This is demonstrated by incorporating them as features in a logistic regression model for delineating flood extents. The features were calculated at different scales by varying accumulation thresholds for stream delineation. The ML flood maps, with an average AUC of 0.89, compared well with the results of 2D hydraulic models that are the basis of the Federal Emergency Management Agency flood hazard maps. The dimensionless Π features outperformed dimensional features, with some of the largest gains in the AUC (of 20%) occurring when the model was trained in one region and tested in another. Dimensionless and multi‐scale Π features in ML flood modeling have the potential to improve generalization, enabling mapping in unmapped areas and across a broader spectrum of landscapes, climates, and events.
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spelling doaj-art-3fd236a23e164e4b8cdb8261b1aa926f2025-08-20T03:22:16ZengWileyWater Resources Research0043-13971944-79732025-04-01614n/an/a10.1029/2024WR039086Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine LearningMark S. Bartlett0Jared VanBlitterswyk1Martha Farella2Jinshu Li3Curtis Smith4Anthony J. Parolari5Lalitha Krishnamoorthy6Assaad Mrad7The Water Institute Baton Rouge LA USAStantec Ottawa ON CanadaStantec Flagstaff AZ USAStantec Pasadena CA USAStantec New York NY USAStantec Lombard IL USAStantec Austin TX USAStantec Raleigh NC USAAbstract Rapid delineation of flash flood extents is critical to mobilize emergency resources and to manage evacuations, thereby saving lives and property. Machine learning (ML) provides a promising solution for this rapid delineation, offering a computationally efficient alternative to high‐resolution 2D flood models. However, even when trained on diverse geographic regions, ML models typically require retraining to perform well in new locations, and therefore often fail to generalize to never‐before‐seen conditions. To improve ML generalization, we apply Buckingham Π theorem to derive dimensionless terms across multiple spatial scales. These multiscale Π terms represent ratios of the relevant physical quantities governing the flooding process. Since the scaling laws of these dimensionless Π terms encode process similarity across physical scales, these Π terms enhance ML transferability to unseen locations. This is demonstrated by incorporating them as features in a logistic regression model for delineating flood extents. The features were calculated at different scales by varying accumulation thresholds for stream delineation. The ML flood maps, with an average AUC of 0.89, compared well with the results of 2D hydraulic models that are the basis of the Federal Emergency Management Agency flood hazard maps. The dimensionless Π features outperformed dimensional features, with some of the largest gains in the AUC (of 20%) occurring when the model was trained in one region and tested in another. Dimensionless and multi‐scale Π features in ML flood modeling have the potential to improve generalization, enabling mapping in unmapped areas and across a broader spectrum of landscapes, climates, and events.https://doi.org/10.1029/2024WR039086floodingpluvial floodingBuckingham π theoremmachine learninglogistic regressionflood mapping
spellingShingle Mark S. Bartlett
Jared VanBlitterswyk
Martha Farella
Jinshu Li
Curtis Smith
Anthony J. Parolari
Lalitha Krishnamoorthy
Assaad Mrad
Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
Water Resources Research
flooding
pluvial flooding
Buckingham π theorem
machine learning
logistic regression
flood mapping
title Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
title_full Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
title_fullStr Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
title_full_unstemmed Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
title_short Physically Based Dimensionless Features for Pluvial Flood Mapping With Machine Learning
title_sort physically based dimensionless features for pluvial flood mapping with machine learning
topic flooding
pluvial flooding
Buckingham π theorem
machine learning
logistic regression
flood mapping
url https://doi.org/10.1029/2024WR039086
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