Shallow-water type models are commonly used in tsunami simulations. These models contain uncertain parameters like the ratio of densities of layers, friction coefficient, fault deformation, etc. These parameters are modeled statistically and quantifying the resulting solution uncertainty (UQ) is a crucial task in geophysics. We propose a paradigm for UQ that combines the recently developed path-conservative spatial discretizations efficiently implemented on cluster of GPUs, with the recently developed Multi-Level Monte Carlo (MLMC) statistical sampling method and provides a fast, accurate and computationally efficient framework to compute statistical quantities of interest. Numerical experiments, including realistic simulations in real bath...
The risk from erosion and flooding in the coastal zone has the potential to increase in a changing c...
We present a database of pre-calculated tsunami waveforms for the entire Mediterranean Sea, obtained...
Stochastic Galerkin methods can quantify uncertainty at a fraction of the computational cost of simp...
Shallow-water type models are commonly used in tsunami simulations. These models contain uncertain p...
Two layer Savage–Hutter type shallow water PDEs model flows such as tsunamis generated by rockslides...
The initial data and bottom topography, used as inputs in shallow water models, are prone to uncerta...
When choosing an appropriate hydrodynamic model, there is always a compromise between accuracy and c...
Aim of this study is to present robust numerical methods for shallow water equations permitting to c...
Abstract. When choosing an appropriate hydrodynamic model, there is always a compromise between accu...
Probabilistic Tsunami Hazard Analysis (PTHA) quantifies the probability of exceeding a specified inu...
Thesis (Ph.D.)--University of Washington, 2017-06In this thesis, we consider an uncertainty quantifi...
Submarine landslides can pose serious tsunami hazard to coastal communities. However, performing a c...
Statistical methods constitute a useful approach to understand and quantify the uncertainty that gov...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Modeling uncertainties in the input parameters of computer simulations is an established way to acco...
The risk from erosion and flooding in the coastal zone has the potential to increase in a changing c...
We present a database of pre-calculated tsunami waveforms for the entire Mediterranean Sea, obtained...
Stochastic Galerkin methods can quantify uncertainty at a fraction of the computational cost of simp...
Shallow-water type models are commonly used in tsunami simulations. These models contain uncertain p...
Two layer Savage–Hutter type shallow water PDEs model flows such as tsunamis generated by rockslides...
The initial data and bottom topography, used as inputs in shallow water models, are prone to uncerta...
When choosing an appropriate hydrodynamic model, there is always a compromise between accuracy and c...
Aim of this study is to present robust numerical methods for shallow water equations permitting to c...
Abstract. When choosing an appropriate hydrodynamic model, there is always a compromise between accu...
Probabilistic Tsunami Hazard Analysis (PTHA) quantifies the probability of exceeding a specified inu...
Thesis (Ph.D.)--University of Washington, 2017-06In this thesis, we consider an uncertainty quantifi...
Submarine landslides can pose serious tsunami hazard to coastal communities. However, performing a c...
Statistical methods constitute a useful approach to understand and quantify the uncertainty that gov...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Modeling uncertainties in the input parameters of computer simulations is an established way to acco...
The risk from erosion and flooding in the coastal zone has the potential to increase in a changing c...
We present a database of pre-calculated tsunami waveforms for the entire Mediterranean Sea, obtained...
Stochastic Galerkin methods can quantify uncertainty at a fraction of the computational cost of simp...