Print Email Facebook Twitter Applying a Bayesian network based on Gaussian copulas to model the hydraulic boundary conditions for hurricane flood risk analysis in a coastal watershed Title Applying a Bayesian network based on Gaussian copulas to model the hydraulic boundary conditions for hurricane flood risk analysis in a coastal watershed Author Sebastian, Antonia (TU Delft Hydraulic Structures and Flood Risk; Rice University) Dupuits, E.J.C. (TU Delft Hydraulic Structures and Flood Risk) Morales Napoles, O. (TU Delft Hydraulic Structures and Flood Risk) Date 2017-07 Abstract In recent years significant emphasis has been placed on quantifying coastal flood hazards in the U.S. using high resolution 2-D hydrodynamic and nearshore wave models. However, these studies are computationally expensive and often neglect to consider the flooding that arises from the combined hazards of precipitation and storm surge in coastal watersheds. This paper describes a method to stochastically simulate a large number of combinations of peak storm surge and cumulative precipitation to determine the hydraulic boundary conditions for a low-lying coastal watershed draining into a semi-enclosed tidal bay. The method is computationally efficient and takes into consideration five tropical cyclone characteristics at landfall: windspeed, angle of approach, landfall location, radius of maximum winds, and forward speed. A precipitation gage network and tidal gage data were used, along with observations from over 300 tropical cyclones in the Gulf of Mexico. A Non-parametric Bayesian Network was built to generate 100,000 synthetic storm events and used as input to an empirical wind set-up model to simulate storm surge within a tidal bay and at the downstream boundary of the watershed. Based on the results, probable combinations of cumulative precipitation and peak storm surge for the watershed during hurricane conditions are determined. These boundary conditions can be easily incorporated into a coastal riverine model to determine flood risk in the watershed. Subject Tropical cycloneFlood riskCompound floodingStorm surgeBayesian networksCopula To reference this document use: http://resolver.tudelft.nl/uuid:a04f4ee5-2225-424f-93a1-11decd93c1c2 Embargo date 2019-08-01 ISSN 0378-3839 Source Coastal Engineering, 125, 42-50 Part of collection Institutional Repository Document type journal article Rights © 2017 Antonia Sebastian, E.J.C. Dupuits, O. Morales Napoles Files PDF applying_bayesian_network.pdf 1.2 MB Close viewer /islandora/object/uuid:a04f4ee5-2225-424f-93a1-11decd93c1c2/datastream/OBJ/view