Abstract
Abstract. Miami-Dade County (south-east Florida) is among the most vulnerable regions to sea level rise in the United States, due to a variety of natural and
human factors. The co-occurrence of multiple, often statistically dependent flooding drivers – termed compound events – typically exacerbates
impacts compared with their isolated occurrence. Ignoring dependencies between the drivers will potentially lead to underestimation of flood risk
and under-design of flood defence structures. In Miami-Dade County water control structures were designed assuming full dependence between rainfall
and Ocean-side Water Level (O-sWL), a conservative assumption inducing large safety factors. Here, an analysis of the dependence between the
principal flooding drivers over a range of lags at three locations across the county is carried out. A two-dimensional analysis of rainfall and
O-sWL showed that the magnitude of the conservative assumption in the original design is highly sensitive to the regional sea level rise projection
considered. Finally, the vine copula and Heffernan and Tawn (2004) models are shown to outperform five standard higher-dimensional copulas in
capturing the dependence between the principal drivers of compound flooding: rainfall, O-sWL, and groundwater level. The work represents a first
step towards the development of a new framework capable of capturing dependencies between different flood drivers that could potentially be
incorporated into future Flood Protection Level of Service (FPLOS) assessments for coastal water control structures.
Funder
National Science Foundation
South Florida Water Management District
Subject
General Earth and Planetary Sciences
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