Abstract. An equation that arises in mathematical studies of the transport of pollutants in groundwater and of oil recovery processes is of the form: −∇x · (κ(x, ·)∇xu(x, ω)) = f(x), for x ∈ D, where κ(x, ·), the permeability tensor, is random and models the properties of the rocks, which are not know with certainty. Further, geostatistical models assume κ(x, ·) to be a log-normal random field. The use of Monte Carlo methods to approximate the expected value of u(x, ·), higher moments, or other functionals of u(x, ·), require solving similar system of equations many times as trajectories are considered, thus it becomes expensive and impractical. In this paper, we present and explain sev-eral advantages of using the White Noise probability ...
Abstract. In this work we first focus on the Stochastic Galerkin approximation of the solution u of ...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
This book covers numerical methods for stochastic partial differential equations with white noise us...
Abstract. An equation that arises in mathematical studies of the transport of pollutants in groundwa...
An equation that arises in mathematical studies of the transport of pollutants in groundwater and of...
Stochastic partial differential equations arise when modelling uncertain phenomena. Here the emphasi...
This thesis describe the generation of random fields using elliptic stochastic partial differential ...
This thesis describe the generation of random fields using elliptic stochastic partial differential ...
Abstract. We consider numerical solutions of elliptic stochastic PDEs driven by spatial white noise....
Abstract. Physical phenomena in domains with rough boundaries play an important role in a variety of...
Stationary systems modelled by elliptic partial differential equations---linear as well as nonlinear...
It is common practice in the study of stochastic Galerkin methods for boundary value problems depend...
Many science and engineering applications are impacted by a significant amount of uncertainty in the...
In this paper we propose and analyze a stochastic collocation method to solve elliptic partial diffe...
We consider the numerical approximation of a partial differential equation (PDE) with random co-effi...
Abstract. In this work we first focus on the Stochastic Galerkin approximation of the solution u of ...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
This book covers numerical methods for stochastic partial differential equations with white noise us...
Abstract. An equation that arises in mathematical studies of the transport of pollutants in groundwa...
An equation that arises in mathematical studies of the transport of pollutants in groundwater and of...
Stochastic partial differential equations arise when modelling uncertain phenomena. Here the emphasi...
This thesis describe the generation of random fields using elliptic stochastic partial differential ...
This thesis describe the generation of random fields using elliptic stochastic partial differential ...
Abstract. We consider numerical solutions of elliptic stochastic PDEs driven by spatial white noise....
Abstract. Physical phenomena in domains with rough boundaries play an important role in a variety of...
Stationary systems modelled by elliptic partial differential equations---linear as well as nonlinear...
It is common practice in the study of stochastic Galerkin methods for boundary value problems depend...
Many science and engineering applications are impacted by a significant amount of uncertainty in the...
In this paper we propose and analyze a stochastic collocation method to solve elliptic partial diffe...
We consider the numerical approximation of a partial differential equation (PDE) with random co-effi...
Abstract. In this work we first focus on the Stochastic Galerkin approximation of the solution u of ...
Mathematical models of engineering systems and physical processes typically take the form of a parti...
This book covers numerical methods for stochastic partial differential equations with white noise us...