Impact assessment of extreme storm events using a Bayesian network

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Abstract

This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessment of dune coasts. A network has been created that predicts the erosion volume based on hydraulic boundary conditions and a number of cross-shore profile indicators. Field measurement data along a large part of the Dutch coast has been used to train the network. Corresponding storm impact on the dunes was calculated with an empirical dune erosion model named duros+. Comparison between the Bayesian Network predictions and the original duros+ results, here considered as observations, results in a skill up to 0.88, provided that the training data covers the range of predictions. Hence, the predictions from a deterministic model (duros+) can be captured in a probabilistic model (Bayesian Network) such that both the process knowledge and uncertainties can be included in impact and vulnerability assessments.

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Den Heijer, C., Knipping, D. T. J. A., Plant, N. G., Van Thiel De Vries, J. S. M., Baart, F., & Van Gelder, P. H. A. J. M. (2012). Impact assessment of extreme storm events using a Bayesian network. In Proceedings of the Coastal Engineering Conference. https://doi.org/10.9753/icce.v33.management.4

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