4.7 Article

Sequential data assimilation for real-time probabilistic flood inundation mapping

Journal

HYDROLOGY AND EARTH SYSTEM SCIENCES
Volume 25, Issue 9, Pages 4995-5011

Publisher

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/hess-25-4995-2021

Keywords

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Funding

  1. U.S. Army Corps of Engineers [W912HZ2020055]

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Real-time probabilistic flood inundation mapping is crucial for flood risk warning and decision-making, and traditional flood hazard maps cannot accurately represent the actual dynamics of flooding rivers. Introducing data assimilation techniques is an effective way to improve the accuracy and reliability of flood inundation mapping.
Real-time probabilistic flood inundation mapping is crucial for flood risk warning and decision-making during the emergency period before an upcoming flood event. Considering the high uncertainties involved in the modeling of a nonlinear and complex flood event, providing a deterministic flood inundation map can be erroneous and misleading for reliable and timely decision-making. The conventional flood hazard maps provided for different return periods cannot also represent the actual dynamics of flooding rivers. Therefore, a real-time modeling framework that forecasts the inundation areas before the onset of an upcoming flood is of paramount importance. Sequential data assimilation (DA) techniques are well known for real-time operation of physical models while accounting for existing uncertainties. In this study, we present a DA hydrodynamic modeling framework where multiple gauge observations are integrated into the LISFLOOD-FP model to improve its performance. This study utilizes the ensemble Kalman filter (EnKF) in a multivariate fashion for dual estimation of model state variables and parameters where the correlations among point source observations are taken into account. First, a synthetic experiment is designed to assess the performance of the proposed approach; then the method is used to simulate the Hurricane Harvey flood in 2017. Our results indicate that the multivariate assimilation of point source observations into hydrodynamic models can improve the accuracy and reliability of probabilistic flood inundation mapping by 5 %-7 %, while it also provides the basis for sequential updating and real-time flood inundation mapping.

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