Development of probabilistic dam breach model using Bayesian inference
S. J. Peter, A. Siviglia, J. Nagel, S. Marelli, R. M. Boes, D. Vetsch, and B. Sudret

TL;DR
This paper introduces a probabilistic dam breach model using Bayesian inference, enhancing the reliability of hydrograph predictions for earthen dams by quantifying uncertainties and employing MCMC for model inversion.
Contribution
A new physics-based dam breach model integrated into a Bayesian framework that quantifies uncertainties and improves hydrograph prediction accuracy.
Findings
Main uncertainty from residual and erosion rate parameters
Prediction intervals align with literature values
Probabilistic hydrograph prediction enhances flood risk management
Abstract
Dam breach models are commonly used to predict outflow hydrographs of potentially failing dams and are key ingredients for evaluating flood risk. In this paper a new dam breach modeling framework is introduced that shall improve the reliability of hydrograph predictions of homogeneous earthen embankment dams. Striving for a small number of parameters, the simplified physics-based model describes the processes of failing embankment dams by breach enlargement, driven by progressive surface erosion. Therein the erosion rate of dam material is modeled by empirical sediment transport formulations. Embedding the model into a Bayesian multilevel framework allows for quantitative analysis of different categories of uncertainties. To this end, data available in literature of observed peak discharge and final breach width of historical dam failures was used to perform model inversion by applying…
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