International audienceCompound events (CEs) are multivariate extreme events in which the individual contributing variables may not be extreme themselves, but their joint – dependent – occurrence causes an extreme impact. Conventional univariate statistical analysis cannot give accurate information regarding the multivariate nature of these events. We develop a conceptual model, implemented via pair-copula constructions, which allows for the quantification of the risk associated with compound events in present-day and future climate, as well as the uncertainty estimates around such risk. The model includes predictors, which could represent for instance meteorological processes that provide insight into both the involved physical mechanisms a...
Long flood series are required to accurately estimate flood quantiles associated with high return pe...
In this paper two methodologies are investigated that contribute to better assessment of risks relat...
AbstractThis paper highlights the usefulness of the minimum information and parametric pair-copula c...
International audienceCompound events (CEs) are multivariate extreme events in which the individual ...
Compound events (CEs) are multivariate extreme events in which the individual contributing variables...
Compound events (CEs) are multivariate extreme events in which the individual contributing variables...
Multivariate statistics are important to determine the flood hydrograph for the design of hydraulic ...
International audienceMany climate-related disasters often result from a combination of several clim...
A warming climate is associated with increasing hydroclimatic extremes, which are often interconnect...
"Hydrological events are often characterized by the joint behavior of several correlated random vari...
A warming climate is associated with increasing hydroclimatic extremes, which are often interconnect...
Compound extremes correspond to events with multiple concurrent or consecutive drivers (e.g., ocean ...
Copyright © 2021 The Author(s). In this study, an iterative factorial multimodel Bayesian copula (IF...
Coastal areas are vulnerable to floods caused by rainstorms and typhoons. It is necessary to ascerta...
Long flood series are required to accurately estimate flood quantiles associated with high return pe...
In this paper two methodologies are investigated that contribute to better assessment of risks relat...
AbstractThis paper highlights the usefulness of the minimum information and parametric pair-copula c...
International audienceCompound events (CEs) are multivariate extreme events in which the individual ...
Compound events (CEs) are multivariate extreme events in which the individual contributing variables...
Compound events (CEs) are multivariate extreme events in which the individual contributing variables...
Multivariate statistics are important to determine the flood hydrograph for the design of hydraulic ...
International audienceMany climate-related disasters often result from a combination of several clim...
A warming climate is associated with increasing hydroclimatic extremes, which are often interconnect...
"Hydrological events are often characterized by the joint behavior of several correlated random vari...
A warming climate is associated with increasing hydroclimatic extremes, which are often interconnect...
Compound extremes correspond to events with multiple concurrent or consecutive drivers (e.g., ocean ...
Copyright © 2021 The Author(s). In this study, an iterative factorial multimodel Bayesian copula (IF...
Coastal areas are vulnerable to floods caused by rainstorms and typhoons. It is necessary to ascerta...
Long flood series are required to accurately estimate flood quantiles associated with high return pe...
In this paper two methodologies are investigated that contribute to better assessment of risks relat...
AbstractThis paper highlights the usefulness of the minimum information and parametric pair-copula c...